414 results
Search Results
2. Design of New Word Retrieval Algorithm for Chinese-English Bilingual Parallel Corpus.
- Author
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Zhang, Liting
- Subjects
MACHINE translating ,NATURAL language processing ,ALGORITHMS ,NEW words ,ARTIFICIAL intelligence ,COMPUTER science - Abstract
Natural language processing is an important direction in the field of computer science and artificial intelligence. It can realize various theories and methods of effective communication between humans and computers using natural language. Machine learning is a branch of natural language processing research, which is based on a large-scale English-Chinese database. Due to the relatively poor alignment corpus of English and Chinese bilingual sentences containing unknown words, machine translation is unprofessional and unbalanced, which is the problem studied in this paper. The purpose of this paper is to design and implement a length-based system for sentence alignment between English and Chinese bilingual texts. The research content of this paper is mainly divided into the following parts. First, the evaluation function of bilingual sentence alignment is designed, and on this basis, the bilingual sentence alignment algorithm based on the length and the optimal sentence pair sequence search algorithm is designed. In this paper, China National Knowledge Infrastructure (CNKI) is selected as an English-Chinese bilingual candidate website and English-Chinese bilingual web pages are downloaded. After analyzing the downloaded pages, nontext content such as page tags is removed, and bilingual text information is stored so as to establish an English-Chinese bilingual corpus based on segment alignment and retain English-Chinese bilingual keywords in the web pages. Second, extract the dictionary from the software StarDict, analyze the original dictionary format, and turn it into a custom dictionary format, which is convenient and better to use the double-sentence sentence alignment system, which is conducive to expanding the number of dictionaries and increasing the professionalism of vocabulary. Finally, we extract the stems of English words from the established corpus to simplify the complexity of English word processing, reduce the noise caused by the conversion of word parts of speech, and improve the operation efficiency. A bilingual sentence alignment system based on length is implemented. Finally, the system parameters are adjusted for comparative experiments to test the system performance. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
3. A New Asymptotic Notation: Weak Theta.
- Author
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Mogoş, Andrei-Horia, Mogoş, Bianca, and Florea, Adina Magda
- Subjects
- *
THETA functions , *ALGORITHMS , *ARTIFICIAL intelligence , *COMPARATIVE studies , *COMPUTER science - Abstract
Algorithms represent one of the fundamental issues in computer science, while asymptotic notations are widely accepted as the main tool for estimating the complexity of algorithms. Over the years a certain number of asymptotic notations have been proposed. Each of these notations is based on the comparison of various complexity functions with a given complexity function. In this paper, we define a new asymptotic notation, called “Weak Theta,” that uses the comparison of various complexity functions with two given complexity functions. Weak Theta notation is especially useful in characterizing complexity functions whose behaviour is hard to be approximated using a single complexity function. In addition, in order to highlight the main particularities of Weak Theta, we propose and prove several theoretical results: properties of Weak Theta, criteria for comparing two complexity functions, and properties of a new set of complexity functions (also defined in the paper) based on Weak Theta. Furthermore, to illustrate the usefulness of our notation, we discuss an application of Weak Theta in artificial intelligence. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
4. Open Set Sheep Face Recognition Based on Euclidean Space Metric
- Author
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Junping Qin, Wei Ren, Hongcheng Xue, Chao Quan, Tong Gao, and Jingjing Zhao
- Subjects
Article Subject ,Euclidean space ,Computer science ,business.industry ,General Mathematics ,General Engineering ,Open set ,Pattern recognition ,Engineering (General). Civil engineering (General) ,Facial recognition system ,Metric (mathematics) ,QA1-939 ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
As the essential content of intelligent animal husbandry, identifying each livestock is the only way to achieve modern and refined scientific husbandry. This paper proposes a sheep face recognition method based on European spatial metrics and realizes noncontact sheep identity recognition by training the network using sheep face image samples in the natural environment. The SheepBase data set was first proposed in this process, which contains 6559 images of Inner Mongolia fine-wool sheep and Sunite sheep. To enhance the diversity of the data, the sheep face images were data-enhanced. Secondly, to solve the problems of more redundant information in the sheep face image and the poor posture and angle of the sheep face, we propose the sheep face detection and correction (SheepFaceRepair) method. This method aims to detect the sheep face area in the image to be recognized and align the sheep face area. On this basis, we offer an open sheep facial recognition network (SheepFaceNet) based on the European spatial metric. This method incorporates the biological identity information features of the sheep face to achieve sheep identity. We also tested the effectiveness of this method in the SheepBase data set. The experimental results show that the method proposed in this paper is much higher than the other methods, and the precision of recognition reaches 89.12%. In addition, we found that integrating the biometrics of the sheep face can effectively improve the network’s recognition capacity.
- Published
- 2021
5. Learning Factors Knowledge Tracing Model Based on Dynamic Cognitive Diagnosis
- Author
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Liping Zhang
- Subjects
Forgetting curve ,Article Subject ,Knowledge space ,Process (engineering) ,business.industry ,Computer science ,General Mathematics ,General Engineering ,Personalized learning ,Tracing ,Engineering (General). Civil engineering (General) ,Semantics ,Machine learning ,computer.software_genre ,QA1-939 ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics ,Interpretability ,Meaning (linguistics) - Abstract
This paper mainly studies the influence of dynamic cognitive diagnosis on personalized learning. Considering the influence of knowledge correlation factors and human brain memory factors on learning activities, a knowledge tracing model integrating learning factors is proposed. Firstly, based on the exercise-knowledge association information, the model maps learners and exercises to the knowledge space with clear meaning. Then, the evolution process of learners’ knowledge learning is quantitatively modeled in the knowledge space by integrating the classical learning curve and forgetting curve theory of pedagogy. On the other hand, considering the influence of topic semantics in the learning process, a knowledge tracing model integrating topic semantics is proposed in this paper. Firstly, the model designs a dynamic enhanced memory network to store the common information of knowledge and describes the learners’ dynamic mastery of knowledge. Secondly, the depth representation method of exercise resources is proposed to mine the text personality information and integrate it into the process of learners’ knowledge change modeling. Through a large number of experiments on exercise records, it is verified that the proposed model has accurate prediction performance and knowledge tracing interpretability.
- Published
- 2021
6. Tunnel Lining Crack Recognition Based on Improved Multiscale Retinex and Sobel Edge Detection
- Author
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Quanlei Wang, Kun Jiang, Zhaochen Zhou, Chunquan Dai, Chao Ma, and Ning Zhang
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Article Subject ,Basis (linear algebra) ,Color constancy ,Computer science ,business.industry ,General Mathematics ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,General Engineering ,Filter (signal processing) ,Engineering (General). Civil engineering (General) ,Image (mathematics) ,Identification (information) ,Operator (computer programming) ,QA1-939 ,Computer vision ,Sobel edge detection ,Artificial intelligence ,Rectangle ,TA1-2040 ,business ,Mathematics - Abstract
China is gradually transitioning from the “tunnel construction era” to the “tunnel maintenance era,” and more and more operating tunnels need to be inspected for diseases. With the continuous development of computer vision, the automatic identification of tunnel lining cracks with computers has gradually been applied in engineering. On the basis of summarizing the weaknesses and strengths of previous studies, this paper first uses the improved multiscale Retinex algorithm to filter the collected tunnel crack images and introduces the eight-direction Sobel edge detection operator to extract the edges of the cracks. Perform mathematical morphological operations on the image after edge extraction, and use the principle of the smallest enclosing rectangle to remove the isolated points of the image. Finally, the performance of the algorithm is judged by the objective evaluation index of the image, the accuracy of crack recognition, and the running time of the algorithm. The image filtering algorithm proposed in this paper can better preserve the edges of the image while enhancing the image. The objective evaluation indexes of the image have been improved significantly, and the main body of the crack can be accurately identified. The overall crack recognition accuracy rate can reach 97.5%, which is higher than the existing tunnel lining crack recognition algorithm, and the average calculation time for each image is shorter. This algorithm has high research significance and engineering application value.
- Published
- 2021
7. Remote Sensing Sea Ice Image Classification Based on Multilevel Feature Fusion and Residual Network
- Author
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Yun Zhang, Yanling Han, Cui Pengxia, Ruyan Zhou, Jing Wang, and Shuhu Yang
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geography ,geography.geographical_feature_category ,Article Subject ,Contextual image classification ,business.industry ,Computer science ,General Mathematics ,Deep learning ,Multispectral image ,Feature extraction ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,General Engineering ,Hyperspectral imaging ,Engineering (General). Civil engineering (General) ,Residual ,ComputingMethodologies_PATTERNRECOGNITION ,QA1-939 ,Sea ice ,Artificial intelligence ,TA1-2040 ,business ,Spatial analysis ,Mathematics ,Remote sensing - Abstract
Sea ice disasters are already one of the most serious marine disasters in the Bohai Sea region of our country, which have seriously affected the coastal economic development and residents’ lives. Sea ice classification is an important part of sea ice detection. Hyperspectral imagery and multispectral imagery contain rich spectral information and spatial information and provide important data support for sea ice classification. At present, most sea ice classification methods mainly focus on shallow learning based on spectral features, and the good performance of the deep learning method in remote sensing image classification provides a new idea for sea ice classification. However, the level of deep learning is limited due to the influence of input size in sea ice image classification, and the deep features in the image cannot be fully mined, which affects the further improvement of sea ice classification accuracy. Therefore, this paper proposes an image classification method based on multilevel feature fusion using residual network. First, the PCA method is used to extract the first principal component of the original image, and the residual network is used to deepen the number of network layers. The FPN, PAN, and SPP modules increase the mining between layer and layer features and merge the features between different layers to further improve the accuracy of sea ice classification. In order to verify the effectiveness of the method in this paper, sea ice classification experiments were performed on the hyperspectral image of Bohai Bay in 2008 and the multispectral image of Bohai Bay in 2020. The experimental results show that compared with the algorithm with fewer layers of deep learning network, the method proposed in this paper utilizes the idea of residual network to deepen the number of network layers and carries out multilevel feature fusion through FPN, PAN, and SPP modules, which effectively solves the problem of insufficient deep feature extraction and obtains better classification performance.
- Published
- 2021
8. Key Points Tracking and Grooming Behavior Recognition of Bactrocera minax (Diptera: Trypetidae) via DeepLabCut
- Author
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Zhangzhang He, Zhang Zhiliang, Yafeng Zou, and Wei Zhan
- Subjects
Article Subject ,Computer science ,General Mathematics ,Interval (mathematics) ,Tracking (particle physics) ,03 medical and health sciences ,0302 clinical medicine ,QA1-939 ,Bactrocera ,Reliability (statistics) ,030304 developmental biology ,0303 health sciences ,biology ,business.industry ,Frame (networking) ,General Engineering ,Pattern recognition ,Engineering (General). Civil engineering (General) ,biology.organism_classification ,Behavior recognition ,Key (cryptography) ,Bactrocera minax ,Artificial intelligence ,TA1-2040 ,business ,Mathematics ,030217 neurology & neurosurgery - Abstract
Statistical analysis of Bactrocera grooming behavior is important for pest control and human health. Based on DeepLabCut, this study proposes a noninvasive and effective method to track the key points of Bactrocera minax and to detect and analyze its grooming behavior. The results are analyzed and calculated automatically by a computer program. Traditional movement tracking methods are invasive; for instance, the use of artificial pheromone may affect the behavior of Bactrocera minax, thus directly affecting the accuracy and reliability of experimental results. Traditional research studies mainly rely on manual work for behavior analysis and statistics. Researchers need to play the video frame by frame and record the time interval of each grooming behavior manually, which is time-consuming, laborious, and inaccurate. So the advantages of automated analysis are obvious. Using the method proposed in this paper, the image data of 94538 frames from 5 adult Bactrocera were analyzed and 14 key points were tracked. The overall tracking accuracy was as high as 96.7%. In the behavior analysis and statistics, the average accuracy rate of the five grooming behavior was all above 96%, and the accuracy rate of the remaining two grooming behavior was over 87%. The experimental results show that the automatic noninvasive method designed in this paper can track many key points of Bactrocera minax with high accuracy and ensure the accuracy of insect behavior recognition and analysis, which greatly reduces the manual observation time and provides a new method for key points tracking and behavior recognition of related insects.
- Published
- 2021
9. Sports Sequence Images Based on Convolutional Neural Network
- Author
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Yonghao Chen
- Subjects
Majority rule ,Article Subject ,Contextual image classification ,business.industry ,Computer science ,General Mathematics ,General Engineering ,Word error rate ,020206 networking & telecommunications ,Pattern recognition ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Residual ,Convolutional neural network ,Ensemble learning ,Field (computer science) ,Convolution ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
Convolution neural network has become a hot research topic in the field of computer vision because of its superior performance in image classification. Based on the above background, the purpose of this paper is to analyze sports sequence images based on convolutional neural network. In view of the low detection rate of single-frame and the complexity of multiframe detection algorithms, this paper proposes a new algorithm combining single-frame detection and multiframe detection, so as to improve the detection rate of small targets and reduce the detection time. Based on the traditional residual network, an improved, multiscale, residual network is proposed in this paper. The network structure enables the convolution layer to “observe” data from different scales and obtain more abundant input features. Moreover, the depth of the network is reduced, the gradient vanishing problem is effectively suppressed, and the training difficulty is reduced. Finally, the ensemble learning method of relative majority voting is used to reduce the classification error rate of the network to 3.99% on CIFAR-10, and the error rate is reduced by 3% compared with the original residual neural network.
- Published
- 2021
10. Application of Machine Learning in Supply Chain Management: A Comprehensive Overview of the Main Areas
- Author
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Hadi Rezaei Vandchali, Farzaneh Mansoori Mooseloo, Saeid Sadeghi, Samira Aeini, Erfan Babaee Tirkolaee, İstinye Üniversitesi, Mühendislik ve Doğa Bilimleri Fakültesi, Endüstri Mühendisliği Bölümü, and Tirkolaee, Erfan Babaee
- Subjects
Supply chain risk management ,Computer science ,General Mathematics ,Supply chain ,Big data ,02 engineering and technology ,Machine learning ,computer.software_genre ,Market segmentation ,0502 economics and business ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Sustainable development ,Supply chain management ,business.industry ,Circular economy ,05 social sciences ,General Engineering ,Engineering (General). Civil engineering (General) ,Conceptual framework ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics ,050203 business & management - Abstract
WOS:000672427400001 In today's complex and ever-changing world, concerns about the lack of enough data have been replaced by concerns about too much data for supply chain management (SCM). The volume of data generated from all parts of the supply chain has changed the nature of SCM analysis. By increasing the volume of data, the efficiency and effectiveness of the traditional methods have decreased. Limitations of these methods in analyzing and interpreting a large amount of data have led scholars to generate some methods that have high capability to analyze and interpret big data. Therefore, the main purpose of this paper is to identify the applications of machine learning (ML) in SCM as one of the most well-known artificial intelligence (AI) techniques. By developing a conceptual framework, this paper identifies the contributions of ML techniques in selecting and segmenting suppliers, predicting supply chain risks, and estimating demand and sales, production, inventory management, transportation and distribution, sustainable development (SD), and circular economy (CE). Finally, the implications of the study on the main limitations and challenges are discussed, and then managerial insights and future research directions are given. WOS:000672427400001 Q3
- Published
- 2021
11. Automatic Focusing Method of Microscopes Based on Image Processing
- Author
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Jin Yao and Hongjun Zhang
- Subjects
Microscope ,Article Subject ,Computer science ,General Mathematics ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Image processing ,02 engineering and technology ,law.invention ,03 medical and health sciences ,0302 clinical medicine ,Wavelet ,law ,Search algorithm ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Focal length ,Computer vision ,Autofocus ,business.industry ,General Engineering ,Wavelet transform ,Engineering (General). Civil engineering (General) ,030221 ophthalmology & optometry ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Focus (optics) ,Mathematics - Abstract
Microscope vision analysis is applied in many fields. The traditional way is to use the human eye to observe and manually focus to obtain the image of the observed object. However, with the observation object becoming more and more subtle, the magnification of the microscope is required to be larger and larger. The method of manual focusing cannot guarantee the best focusing position of the microscope in use. Therefore, in this paper, we are studying the existing autofocusing technology and the autofocusing method of microscope based on image processing, which is different from the traditional manual focusing method. The autofocusing method of microscope based on image processing does not need the information such as the target position and the focal length of optical system, to directly focus the collected image. First of all, in order to solve the problem of large computation and difficult real time of traditional wavelet based image sharpness evaluation algorithm, this paper proposes an improved wavelet based image sharpness evaluation algorithm; secondly, in view of the situation that the window selected by traditional focusing window selection method is fixed, this paper adopts an adaptive focusing window selection method to increase the focusing window. Finally, this paper studies the extremum search strategy. In order to avoid the interference of the local extremum in the focusing curve, this paper proposes an improved hill-climbing algorithm to achieve the accuracy of focusing search. The simulation results show that the improved wavelet transform image definition evaluation algorithm can improve the definition evaluation performance, and the improved mountain climbing algorithm can reduce the impact of local extremum and improve the accuracy of the search algorithm. All in all, it can be concluded that the method based on image processing proposed in this paper has a good focusing effect, which can meet the needs of anti-interference and extreme value search of microscope autofocus.
- Published
- 2021
12. Sports Video Augmented Reality Real-Time Image Analysis of Mobile Devices
- Author
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Peng Zhao, Meng Wang, and Hui Wang
- Subjects
Article Subject ,Computer science ,General Mathematics ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Scale-invariant feature transform ,ComputerApplications_COMPUTERSINOTHERSYSTEMS ,02 engineering and technology ,Football ,Hough transform ,law.invention ,law ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Computer vision ,Video game ,business.industry ,ComputingMilieux_PERSONALCOMPUTING ,General Engineering ,020206 networking & telecommunications ,Engineering (General). Civil engineering (General) ,Sample (graphics) ,Trajectory ,020201 artificial intelligence & image processing ,Augmented reality ,Artificial intelligence ,TA1-2040 ,business ,Mobile device ,Mathematics - Abstract
Sports video is loved by the audience because of its unique charm, so it has high research value and application value to analyze and study the video data of competition. Based on the background of football match, this paper studies the football detection and tracking algorithm in football game video and analyzes the real-time image of real-time mobile devices in sports video augmented reality. Firstly, the image is preprocessed by image graying, image denoising, image binarization, and so on. Secondly, Hough transform is used to locate and detect football, and according to the characteristics of football, Hough transform is improved. Based on the good performance of SIFT algorithm in feature matching, a football tracking algorithm based on SIFT feature matching is proposed, which matches the detected football with the sample football. The simulation results show that the improved Hough transform can effectively detect football and has good antijamming performance. And the designed football tracking algorithm based on SIFT feature matching can accurately track the football trajectory; therefore, the football detection and tracking algorithm designed in this paper is suitable for real-time football monitoring and tracking.
- Published
- 2021
13. A Comprehensive Review on Scatter Search: Techniques, Applications, and Challenges
- Author
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Manjit Kaur, Vijay Kumar, Minakshi Kalra, Habib Shah, Kamal Shah, Shobhit Tyagi, and Wali Khan Mashwani
- Subjects
021103 operations research ,Optimization problem ,business.industry ,Computer science ,General Mathematics ,Computation ,0211 other engineering and technologies ,General Engineering ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Machine learning ,computer.software_genre ,Variety (cybernetics) ,Set (abstract data type) ,Metaheuristic algorithms ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,Engineering design process ,business ,Metaheuristic ,computer ,Mathematics - Abstract
Recent years have witnessed the use of metaheuristic algorithms to solve the optimization problems that usually require extensive computations and time. Among others, scatter search is the widely used evolutionary metaheuristic algorithm. It uses the information of global optima, which is stored in a different and unique set of solutions. In this paper, an updated review of scatter search (SS) is given. SS has been successfully applied in a variety of research problems, namely, data mining, bioinformatics, and engineering design. This paper presents the modified and hybrid versions of SS with their applications. The control strategies are discussed to show their impact on the performance of SS. various issues and future directions related to SS are also discussed. It inspires innovative researchers to use this algorithm for their research domains.
- Published
- 2021
14. Deep Visual Semantic Embedding with Text Data Augmentation and Word Embedding Initialization
- Author
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Hai He and Haibo Yang
- Subjects
Word embedding ,Article Subject ,Computer science ,General Mathematics ,Feature vector ,Initialization ,02 engineering and technology ,Machine learning ,computer.software_genre ,Ranking (information retrieval) ,020204 information systems ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Image retrieval ,business.industry ,General Engineering ,Engineering (General). Civil engineering (General) ,Automatic image annotation ,Embedding ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,computer ,Encoder ,Mathematics - Abstract
Language and vision are the two most essential parts of human intelligence for interpreting the real world around us. How to make connections between language and vision is the key point in current research. Multimodality methods like visual semantic embedding have been widely studied recently, which unify images and corresponding texts into the same feature space. Inspired by the recent development of text data augmentation and a simple but powerful technique proposed called EDA (easy data augmentation), we can expand the information with given data using EDA to improve the performance of models. In this paper, we take advantage of the text data augmentation technique and word embedding initialization for multimodality retrieval. We utilize EDA for text data augmentation, word embedding initialization for text encoder based on recurrent neural networks, and minimizing the gap between the two spaces by triplet ranking loss with hard negative mining. On two Flickr-based datasets, we achieve the same recall with only 60% of the training dataset as the normal training with full available data. Experiment results show the improvement of our proposed model; and, on all datasets in this paper (Flickr8k, Flickr30k, and MS-COCO), our model performs better on image annotation and image retrieval tasks; the experiments also demonstrate that text data augmentation is more suitable for smaller datasets, while word embedding initialization is suitable for larger ones.
- Published
- 2021
15. Personalized Emotion Recognition and Emotion Prediction System Based on Cloud Computing
- Author
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Wenqiang Tian
- Subjects
Article Subject ,Generalization ,Computer science ,General Mathematics ,Cloud computing ,02 engineering and technology ,Machine learning ,computer.software_genre ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Feature (machine learning) ,Face detection ,business.industry ,020208 electrical & electronic engineering ,SIGNAL (programming language) ,General Engineering ,Engineering (General). Civil engineering (General) ,Support vector machine ,Data model ,020201 artificial intelligence & image processing ,Artificial intelligence ,State (computer science) ,TA1-2040 ,business ,computer ,Mathematics - Abstract
Promoting economic development and improving people’s quality of life have a lot to do with the continuous improvement of cloud computing technology and the rapid expansion of applications. Emotions play an important role in all aspects of human life. It is difficult to avoid the influence of inner emotions in people’s behavior and deduction. This article mainly studies the personalized emotion recognition and emotion prediction system based on cloud computing. This paper proposes a method of intelligently identifying users’ emotional states through the use of cloud computing. First, an emotional induction experiment is designed to induce the testers’ positive, neutral, and negative three basic emotional states and collect cloud data and EEG under different emotional states. Then, the cloud data is processed and analyzed to extract emotional features. After that, this paper constructs a facial emotion prediction system based on cloud computing data model, which consists of face detection and facial emotion recognition. The system uses the SVM algorithm for face detection, uses the temporal feature algorithm for facial emotion analysis, and finally uses the classification method of machine learning to classify emotions, so as to realize the purpose of identifying the user’s emotional state through cloud computing technology. Experimental data shows that the EEG signal emotion recognition method based on time domain features performs best has better generalization ability and is improved by 6.3% on the basis of traditional methods. The experimental results show that the personalized emotion recognition method based on cloud computing is more effective than traditional methods.
- Published
- 2021
16. Real-Time Arrhythmia Classification Algorithm Using Time-Domain ECG Feature Based on FFNN and CNN
- Author
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Guangda Liu, Mengkun Dong, Jing Cai, Xinlei Hu, Weiguang Ni, and Ge Zhou
- Subjects
Article Subject ,Heartbeat ,Computer science ,General Mathematics ,0206 medical engineering ,02 engineering and technology ,QRS complex ,Classifier (linguistics) ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Segmentation ,Time domain ,Latency (engineering) ,business.industry ,Deep learning ,General Engineering ,Engineering (General). Civil engineering (General) ,020601 biomedical engineering ,ComputingMethodologies_PATTERNRECOGNITION ,Feature (computer vision) ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Algorithm ,Mathematics - Abstract
To solve the problem of real-time arrhythmia classification, this paper proposes a real-time arrhythmia classification algorithm using deep learning with low latency, high practicality, and high reliability, which can be easily applied to a real-time arrhythmia classification system. In the algorithm, a classifier detects the QRS complex position in real time for heartbeat segmentation. Then, the ECG_RRR feature is constructed according to the heartbeat segmentation result. Finally, another classifier classifies the arrhythmia in real time using the ECG_RRR feature. This article uses the MIT-BIH arrhythmia database and divides the 44 qualified records into two groups (DS1 and DS2) for training and evaluation, respectively. The result shows that the recall rate, precision rate, and overall accuracy of the algorithm’s interpatient QRS complex position prediction are 98.0%, 99.5%, and 97.6%, respectively. The overall accuracy for 5-class and 13-class interpatient arrhythmia classification is 91.5% and 75.6%, respectively. Furthermore, the real-time arrhythmia classification algorithm proposed in this paper has the advantages of practicability and low latency. It is easy to deploy the algorithm since the input is the original ECG signal with no feature processing required. And, the latency of the arrhythmia classification is only the duration of one heartbeat cycle.
- Published
- 2021
17. The Understanding of Deep Learning: A Comprehensive Review
- Author
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Ranjan Kumar Mishra, Himanshu Pathak, and G. Y. Sandesh Reddy
- Subjects
Computational model ,Artificial neural network ,Computer science ,business.industry ,General Mathematics ,Deep learning ,General Engineering ,Representation (systemics) ,Cognitive neuroscience of visual object recognition ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Facial recognition system ,Object detection ,030507 speech-language pathology & audiology ,03 medical and health sciences ,Human–computer interaction ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,0305 other medical science ,business ,Mathematics ,Abstraction (linguistics) - Abstract
Deep learning is a computer-based modeling approach, which is made up of many processing layers that are used to understand the representation of data with several levels of abstraction. This review paper presents the state of the art in deep learning to highlight the major challenges and contributions in computer vision. This work mainly gives an overview of the current understanding of deep learning and their approaches in solving traditional artificial intelligence problems. These computational models enhanced its application in object detection, visual object recognition, speech recognition, face recognition, vision for driverless cars, virtual assistants, and many other fields such as genomics and drug discovery. Finally, this paper also showcases the current developments and challenges in training deep neural network.
- Published
- 2021
18. Assistant Training System of Teenagers’ Physical Ability Based on Artificial Intelligence
- Author
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Cong Du
- Subjects
Article Subject ,business.industry ,Computer science ,General Mathematics ,Training system ,Physical fitness ,General Engineering ,Squat ,02 engineering and technology ,Swing ,Engineering (General). Civil engineering (General) ,Test (assessment) ,03 medical and health sciences ,0302 clinical medicine ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Canny edge detector ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Host (network) ,Mathematics ,030217 neurology & neurosurgery ,Rope - Abstract
The rapid development of artificial intelligence technology makes it widely used in various fields. In order to more scientifically assist teenagers in physical training, this paper develops a set of teenagers’ physical training system based on artificial intelligence technology. Firstly, the experimental platform is built, and the sensor nodes are connected with the test host through the serial port to collect data to the experimental platform. The system consists of target detection module, data analysis module, and human posture estimation module. The background modeling method based on vibe model is used to form the target detection module, and the canny edge detection algorithm is used to form the data analysis module. Finally, the posture auxiliary index is established to estimate the human posture. This paper makes a systematic application test on a youth sports team. The experimental group was trained with artificial intelligence-based physical training system, while the control group was trained with traditional training methods. Before the experiment, the physical fitness of the two groups of subjects were evaluated, including standing long jump, 50 meters sprint, 30 s single swing rope skipping, pull-up, and squat 1RM. After 3 and 6 weeks of training, the physical fitness was evaluated again. The experimental results show that the intelligent assistant system established in this paper can accurately show that the physiological load of the athlete is in line with the law of physiological function change. After six weeks of training, the standing long jump of the experimental group has been improved by 20.97 cm, the 50 meters dash has been accelerated by 1.21 s, the 30 second single swing rope has been increased by 13.76, the pull-up has been increased by 1.41, and the squat 1RM has been increased by 15.16. This shows that the auxiliary training system based on artificial intelligence can help young athletes improve their physical quality and enhance their sports skills.
- Published
- 2021
19. Research and Application of Combined Algorithm Based on Sustainable Computing and Artificial Intelligence
- Author
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Bo Hu
- Subjects
Sustainable development ,Article Subject ,business.industry ,Computer science ,General Mathematics ,Big data ,General Engineering ,Information technology ,020206 networking & telecommunications ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Green computing ,Search algorithm ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Information system ,020201 artificial intelligence & image processing ,Ecosystem ,The Internet ,Artificial intelligence ,TA1-2040 ,business ,Algorithm ,Mathematics - Abstract
The Internet is a popular form of information technology development in the new century, and it organizes and analyzes big data by taking effective measures to find useful information. With manpower, it is obviously not enough to be in such a huge information system, so the emergence of sustainable computing and artificial intelligence has become the core of large-scale data processing at this stage. This paper studies the application of the combined algorithm based on sustainable computing and artificial intelligence. In this paper, a new combined intelligent search algorithm is proposed by combining sustainable computing with artificial intelligence. The combination algorithm firstly analyzes the value from the aspects of ecological environment and economic benefits and studies the overall evaluation of sustainable development ability. Secondly, the energy analysis method is used to establish a reasonable comprehensive ecosystem and evaluate its impact on the sustainable development of environment and economy. Finally, the impact of resource consumption, wind speed detection, waste discharge, and utilization of renewable resources in a certain area is analyzed by simulation. Through the experimental results, on the one hand, it is proved that the data obtained by the combined algorithm are more accurate than the single algorithm; on the other hand, the combined algorithm can be further sublimated and widely used for other data detection. The combination algorithm proposed in this paper can effectively detect the required data and has high applicability.
- Published
- 2021
20. Fuzzy Clustering Method Based on Improved Weighted Distance
- Author
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Yingchao Mao, Honghan Bei, Wenyang Wang, and Xu Zhang
- Subjects
0209 industrial biotechnology ,Fuzzy clustering ,Article Subject ,business.industry ,Computer science ,General Mathematics ,General Engineering ,Pattern recognition ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Fuzzy logic ,Euclidean distance ,ComputingMethodologies_PATTERNRECOGNITION ,020901 industrial engineering & automation ,Similarity (network science) ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,Sensitivity (control systems) ,TA1-2040 ,Cluster analysis ,business ,Mathematics ,Selection (genetic algorithm) - Abstract
As an essential data processing technology, cluster analysis has been widely used in various fields. In clustering, it is necessary to select appropriate measures to evaluate the similarity in the data. In this paper, firstly, a cluster center selection method based on the grey relational degree is proposed to solve the problem of sensitivity in initial cluster center selection. Secondly, combining the advantages of Euclidean distance, DTW distance, and SPDTW distance, a weighted distance measurement based on three kinds of reach is proposed. Then, it is applied to Fuzzy C-MeDOIDS and Fuzzy C-means hybrid clustering technology. Numerical experiments are carried out with the UCI datasets. The experimental results show that the accuracy of the clustering results is significantly improved by using the clustering method proposed in this paper. Besides, the method proposed in this paper is applied to the MUSIC INTO EMOTIONS and YEAST datasets. The clustering results show that the algorithm proposed in this paper can also achieve a better clustering effect when dealing with practical problems.
- Published
- 2021
21. AI Based Gravity Compensation Algorithm and Simulation of Load End of Robotic Arm Wrist Force
- Author
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Tao Yu, Hanxu Sun, Wei Zhao, and Liang Chen
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0209 industrial biotechnology ,Article Subject ,Computer science ,General Mathematics ,Gravity compensation ,02 engineering and technology ,020901 industrial engineering & automation ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Torque ,Manipulator ,Simulation ,business.industry ,GRASP ,Work (physics) ,General Engineering ,Robotics ,Engineering (General). Civil engineering (General) ,Motion control ,Robot ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Robotic arm ,Mathematics - Abstract
With the rapid development of mechatronics and robotics technology, the application of robots has been extended from the industrial field to daily life and has become an indispensable part of work and daily life. The accuracy and flexibility of the operator determine the operating efficiency of the robot. Although the level of development of the operator is constantly improving, the traditional operator has a simple structure and generally adopts parallel movement or tightening. The holding structure has poor flexibility and stability, making it difficult to achieve precise position capture and control and cannot meet the requirements of delicate tasks. In this paper, a basic force analysis of the manipulator is carried out, and the change trend of the force and driving force of each joint when the manipulator is grasping objects is obtained, so as to determine that the manipulator can grasp the object stably; then, in the strength analysis of the manipulator, it is determined that the material meets the strength requirements. This paper conducts an output voltage experiment on the static performance and coupling error of the mechanical arm wrist force sensor. Secondly, in order to study the influence of the temperature change in the space environment on the zero-point output of the mechanical arm sensor, a high and low temperature test box are used to simulate the temperature brought by the temperature change to the sensor. Experiments show that the maximum coupling error of the sensor is 1.81%, which is less than 2% of the design index. This indicates that the operator sensor is used to detect the force and torque that the space operator’s edge operator experiences when it interacts with the external environment and provides the necessary power sensing information for power control and compatible operator motion control, completing some complex; the Fine project is an important prerequisite for realizing the intelligence of space operators.
- Published
- 2021
22. Personalized Movie Recommendation Method Based on Deep Learning
- Author
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Jun Liu, Won-Ho Choi, and Jingdong Liu
- Subjects
Article Subject ,Machine translation ,Computer science ,General Mathematics ,02 engineering and technology ,computer.software_genre ,Field (computer science) ,Entertainment ,020204 information systems ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Collaborative filtering ,Selection (linguistics) ,Training set ,Multimedia ,business.industry ,Deep learning ,General Engineering ,Engineering (General). Civil engineering (General) ,Recurrent neural network ,Test set ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics - Abstract
With the rapid development of network technology and entertainment creation, the types of movies have become more and more diverse, which makes users wonder how to choose the type of movies. In order to improve the selection efficiency, recommend Algorithm came into being. Deep learning is a research field that has received extensive attention from scholars in recent years. Due to the characteristics of its deep architecture, deep learning models can learn more complex structures. Therefore, deep learning algorithms in speech recognition, machine translation, image recognition, and other fields have achieved impressive results. This article mainly introduces the research of personalized movie recommendation methods based on deep learning and intends to provide ideas and directions for the research of personalized movie recommendation under deep learning. This paper proposes a research method of personalized movie recommendation methods based on deep learning, including an overview of personalized recommendation and collaborative filtering recommendation algorithms, which are used to conduct research experiments on personalized movie recommendation methods based on deep learning. The experimental results in this paper show that the accuracy of the training set of the Seq2Seq model based on the LSTM recurrent neural network reaches 96.27% and the accuracy of the test set reaches 95.89%, which can be better for personalized movie recommendation.
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- 2021
23. Relation and Application Method of Deep Learning Sea Target Detection and Segmentation Algorithm
- Author
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Zheng Wang, Guangfu Li, and Jia Ren
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Relation (database) ,Computer science ,business.industry ,General Mathematics ,Deep learning ,0211 other engineering and technologies ,General Engineering ,Wavelet transform ,Cascade algorithm ,Speckle noise ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Field (computer science) ,Constant false alarm rate ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Segmentation ,Artificial intelligence ,TA1-2040 ,business ,Algorithm ,Mathematics ,021101 geological & geomatics engineering - Abstract
Target detection and segmentation algorithms have long been one of the main research directions in the field of computer vision, especially in the study of sea surface image understanding, these two tasks often need to consider the collaborative work at the same time, which is very high for the computing processor performance requirements. This article aims to study the deep learning sea target detection and segmentation algorithm. This paper uses wavelet transform-based filtering method for speckle noise suppression, deep learning-based method for land masking, and the target detection part uses an improved CFAR cascade algorithm. Finally, the best separable features are selected to eliminate false alarms. In order to further illustrate the feasibility of the scheme, this paper uses measured data and simulation data to verify the scheme and discusses the effect of different signal-to-noise ratio, sea target type, and attitude on the algorithm performance. The research data show that the deep learning sea target detection and segmentation algorithm has good detection performance and is generally applicable to ship target detection of different types and different attitudes. The results show that the deep learning sea target detection and segmentation algorithm fully takes into account the irregular shape and texture of the interfering target detected in the optical remote sensing image so that the accuracy rate is 32.7% higher and the efficiency is increased by about 1.3 times. The deep learning sea target detection is compared with segmentation algorithm, and it has strong target characterization ability and can be applied to ship targets of different scales.
- Published
- 2020
24. Lower Limb Motion Recognition Method Based on Improved Wavelet Packet Transform and Unscented Kalman Neural Network
- Author
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Xin Shi, Shuyuan Xu, Pengjie Qin, Jiaqing Zhu, and Weiren Shi
- Subjects
Article Subject ,Artificial neural network ,Computer science ,business.industry ,General Mathematics ,020208 electrical & electronic engineering ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,General Engineering ,02 engineering and technology ,Kalman filter ,Engineering (General). Civil engineering (General) ,Backpropagation ,Wavelet packet decomposition ,Exoskeleton ,Noise ,Sliding window protocol ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Feature (machine learning) ,020201 artificial intelligence & image processing ,Computer vision ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
Exoskeleton robot is a typical application to assist the motion of lower limbs. To make the lower extremity exoskeleton more flexible, it is necessary to identify various motion intentions of the lower limbs of the human body. Although more sEMG sensors can be used to identify more lower limb motion intention, with the increase in the number of sensors, more and more data need to be processed. In the process of human motion, the collected sEMG signal is easy to be interfered with noise. To improve the practicality of the lower extremity exoskeleton robot, this paper proposed a wavelet packet transform- (WPT-) based sliding window difference average filtering feature extract algorithm and the unscented Kalman neural network (UKFNN) recognition algorithm. We established an sEMG energy feature model, using a sliding window difference average filtering method to suppress noise interference and extracted stable feature values and using UKF filtering to optimize the neural network weights to improve the adaptability and accuracy of the recognition model. In this paper, we collected the sEMG signals of three muscles to identify six lower limb motion intentions. The average accuracy of 94.83% is proposed in this paper. Experiments show that the algorithm improves the accuracy and anti-interference of motion intention recognition of lower limb sEMG signals. The algorithm is superior to the backpropagation neural network (BPNN) recognition algorithm in the lower limb motion intention recognition and proves the effectiveness, novelty, and reliability of the method in this paper.
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- 2020
25. A Novel Attentive Generative Adversarial Network for Waterdrop Detection and Removal of Rubber Conveyor Belt Image
- Author
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Li Bin, Debao Zhou, Li Xianguo, Feng Xinxin, Liu Zongpeng, and Liu Xiao
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Article Subject ,Image quality ,Computer science ,General Mathematics ,Conveyor belt ,02 engineering and technology ,Convolutional neural network ,Image (mathematics) ,Natural rubber ,Discriminative model ,QA1-939 ,0202 electrical engineering, electronic engineering, information engineering ,Computer vision ,business.industry ,Drop (liquid) ,General Engineering ,020207 software engineering ,Engineering (General). Civil engineering (General) ,Autoencoder ,visual_art ,visual_art.visual_art_medium ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,Neural coding ,business ,Mathematics - Abstract
The lens for monitoring the rubber conveyor belt is easy to adhere to a large number of water droplets, which seriously affects the image quality and then affects the effect of fault monitoring. In this paper, a new method for detecting and removing water droplets on rubber conveyor belts based on the attentive generative adversarial network is proposed to solve this problem. First, the water droplet image of the rubber conveyor belt is input into the generative network composed of a cyclic visual attentive network and an autoencoder with skip connections, and an image of removing water droplets and an attention map for detecting the position of the water droplet are generated. Then, the generated image of removing water droplets is evaluated by the attentive discriminant network to assess the local consistency of the water droplet recovery area. In order to better learn the water droplet regions and the surrounding structures during the training, the image morphology is added to the precise water droplet regions. A dewatered rubber conveyor belt image is generated by increasing the number of circular visual attention network layers and the number of skip connection layers of the autoencoder. Finally, a large number of comparative experiments prove the effectiveness of the water droplet image removal algorithm proposed in this paper, which outperforms of Convolutional Neural Network (CNN), Discriminative Sparse Coding (DSC), Layer Prior (LP), and Attention Generative Adversarial Network (ATTGAN).
- Published
- 2020
26. Size Projection Algorithm: Optimal Thresholding Value Selection for Image Segmentation of Electrical Impedance Tomography
- Author
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Min Zhang, Jian Wang, Yan Han, Na Yang, Pengfei Nie, and Kun Li
- Subjects
Article Subject ,Computer science ,General Mathematics ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,01 natural sciences ,010309 optics ,Histogram ,0103 physical sciences ,Segmentation ,Projection (set theory) ,Electrical impedance tomography ,Dykstra's projection algorithm ,Tomographic reconstruction ,business.industry ,lcsh:Mathematics ,010401 analytical chemistry ,General Engineering ,Pattern recognition ,Image segmentation ,lcsh:QA1-939 ,Thresholding ,0104 chemical sciences ,lcsh:TA1-2040 ,Artificial intelligence ,lcsh:Engineering (General). Civil engineering (General) ,business - Abstract
Thresholding is an efficient step to extract quantitative information since the potential artefacts are often introduced by the point-spread effect of tomographic imaging. The thresholding value was previously selected only relying on engineering experience or histogram of tomographic image, which often presents a great challenge to determine an accurate thresholding value for various applications. As the tomographic image features often do not provide sufficient information to choose the best thresholding value, the information implicit in the measured boundary data is introduced into the thresholding process in this paper. A projection error, the relative difference between the computed boundary data of current segmentation and the measured boundary data, is proposed as a quantitative measure of such image segmentation quality. Then, a new multistep image segmentation process, called size projection algorithm (SPA), is proposed to automatically determine an optimal thresholding value by minimising the projection error. Results of simulation and experiment demonstrate the improved performance of the SPA-based tomographic image segmentation. An application of size projection algorithm for gas-water two-phase flow visualisation is also reported in this paper.
- Published
- 2019
27. A Geometrical-Information-Assisted Approach for Local Feature Matching
- Author
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Buhai Shi, Haibo Xu, and Qingming Zhang
- Subjects
Matching (statistics) ,Article Subject ,Plane (geometry) ,business.industry ,Computer science ,lcsh:Mathematics ,General Mathematics ,0211 other engineering and technologies ,General Engineering ,Pattern recognition ,02 engineering and technology ,lcsh:QA1-939 ,k-nearest neighbors algorithm ,Bayes' theorem ,lcsh:TA1-2040 ,Feature (computer vision) ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Point (geometry) ,Artificial intelligence ,lcsh:Engineering (General). Civil engineering (General) ,business ,Feature matching ,021101 geological & geomatics engineering - Abstract
This paper presents a geometrical-information-assisted approach for matching local features. With the aid of Bayes’ theorem, it is found that the posterior confidence of matched features can be improved by introducing global geometrical information given by distances between feature points. Based on this result, we work out an approach to obtain the geometrical information and apply it to assist matching features. The pivotal techniques in this paper include (1) exploiting elliptic parameters of feature descriptors to estimate transformations that map feature points in images to points in an assumed plane; (2) projecting feature points to the assumed plane and finding a reliable referential point in it; (3) computing differences of the distances between the projected points and the referential point. Our new approach employs these differences to assist matching features, reaching better performance than the nearest neighbor-based approach in precision versus the number of matched features.
- Published
- 2019
28. Algorithms and Devices for Smart Processing Technology for Energy Saving.
- Author
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Lee, Sanghyuk, Nayel, Mohamed, Pham, Van Huy, and Rhee, Sang Bong
- Subjects
ALGORITHMS ,ARTIFICIAL intelligence ,URBAN growth ,COMPUTER science ,SMART devices ,METAHEURISTIC algorithms - Abstract
With the needs of developing technology, we aim to provide an open forum on this research idea, specifically in smart devices and their application, and related algorithms/applications. Recently, AI-oriented research has been provided with its fundamental research on application to networked systems [[4]] and the heuristic and metaheuristic algorithms also obtained much attention based on nature-inspired optimization algorithms [[5]]. From the Special Issue, we can see that the topics range from smart device development and applications to processing algorithm development and applications as well. [Extracted from the article]
- Published
- 2021
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29. A Clustering Application Scenario Based on an Improved Self-Organizing Feature Mapping Network System
- Author
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Qian Cao
- Subjects
Normalization (statistics) ,Article Subject ,Computer science ,020209 energy ,General Mathematics ,Rationality ,Sample (statistics) ,02 engineering and technology ,Football ,Machine learning ,computer.software_genre ,0202 electrical engineering, electronic engineering, information engineering ,Feature mapping ,QA1-939 ,Cluster analysis ,Network model ,business.industry ,020208 electrical & electronic engineering ,General Engineering ,Cognition ,Engineering (General). Civil engineering (General) ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics - Abstract
Categorizing national football teams by level is challenging because there is no standard of reference. Therefore, the self-organizing feature mapping network is used to solve this problem. In this paper, appropriate sample data were collected and an appropriate self-organizing feature mapping network model was built. After training, we obtained the classification results of 4 grades of 16 major Asian football national teams. As for the classification results, it is different to normalize the input data and not to normalize the input data. The classification results accord with our subjective cognition, which indicates the rationality of self-organizing feature mapping network in solving the classification problem of national football teams. In addition, the paper makes a detailed analysis of the classification results of the Chinese team and compares the gap between the Chinese team and the top Asian teams. It also analyses the impact of the normalization of input data on the classification results, taking Saudi Arabia as an example.
- Published
- 2021
30. An Empirical Study on Sports Combination Training Action Recognition Based on SMO Algorithm Optimization Model and Artificial Intelligence
- Author
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Hecai Jiang and Sang-Bing Tsai
- Subjects
Article Subject ,Artificial neural network ,business.industry ,Computer science ,020209 energy ,General Mathematics ,Feature vector ,Deep learning ,Feature extraction ,General Engineering ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Convolutional neural network ,Support vector machine ,Action (philosophy) ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,Sequential minimal optimization ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
In order to improve the accuracy of sports combination training action recognition, a sports combination training action recognition model based on SMO algorithm optimization model and artificial intelligence is proposed. In this paper, by expanding the standard action data, the standard database of score comparison is established, and the system architecture and the key acquisition module design based on 3D data are given. In this paper, the background subtraction method is used to process the sports video image to obtain the sports action contour and realize the sports action segmentation and feature extraction, and the artificial intelligence neural network is used to train the feature vector to establish the sports action recognition classifier. This paper mainly uses a three-stream CNN artificial intelligence deep learning framework based on convolutional neural network and uses a soft Vlad representation algorithm based on data decoding to learn the action features. Through the data enhancement of the existing action database, it uses support vector machine to achieve high-precision action classification. The test results show that the model improves the recognition rate of sports action and reduces the error recognition rate, which can meet the online recognition requirements of sports action.
- Published
- 2021
31. The Construction Method of the Digital Operation Environment for Bridge Cranes
- Author
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Qicai Zhou, Jiong Zhao, Keyuan Zhao, and Xiaolei Xiong
- Subjects
0209 industrial biotechnology ,Article Subject ,Computer science ,General Mathematics ,0211 other engineering and technologies ,Point cloud ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,02 engineering and technology ,Bridge (nautical) ,Octree ,020901 industrial engineering & automation ,021105 building & construction ,QA1-939 ,Computer vision ,Block (data storage) ,Pixel ,Operating environment ,business.industry ,Frame (networking) ,General Engineering ,Process (computing) ,Engineering (General). Civil engineering (General) ,Computer Science::Computer Vision and Pattern Recognition ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
To realize real-time detection of the operating environment of bridge cranes, this paper presents a three-dimensional mapping method using a binocular camera and laser ranging sensor. First, the left and right images are obtained by using the binocular camera, and the block matching is used for stereo correspondence to obtain the disparity image. Then, according to the reprojection matrix and the disparity image, the depth value of each pixel is obtained, and the depth image can be transformed into a three-dimensional point cloud of the current frame. Relying on the camera position data obtained by the laser ranging sensor, the three-dimensional point cloud generated from different positions is registered to obtain the three-dimensional point cloud of the craneʼs global operating environment. Finally, an octree map is used to represent the operating environment. To simulate the construction process of the operating environment of the bridge crane, an experimental platform was built, and experiments were carried out using the method proposed in this paper. The experimental results verified the feasibility of the method proposed in this paper.
- Published
- 2021
32. Research on Autoarrangement System of Accompaniment Chords Based on Hidden Markov Model with Machine Learning
- Author
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Shuo Shi, Sang-Bing Tsai, and Shuting Xi
- Subjects
Article Subject ,Computer science ,GeneralLiterature_INTRODUCTORYANDSURVEY ,InformationSystems_INFORMATIONINTERFACESANDPRESENTATION(e.g.,HCI) ,General Mathematics ,Feature extraction ,Machine learning ,computer.software_genre ,Key (music) ,QA1-939 ,Hidden Markov model ,MIDI ,business.industry ,General Engineering ,Construct (python library) ,computer.file_format ,Engineering (General). Civil engineering (General) ,Interval (music) ,ComputingMethodologies_PATTERNRECOGNITION ,Music theory ,Chord (music) ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics - Abstract
Accompaniment production is one of the most important elements in music work, and chord arrangement is the key link of accompaniment production, which usually requires more musical talent and profound music theory knowledge to be competent. In this article, the machine learning model is used to replace manual accompaniment chords’ arrangement, and an automatic computer means is provided to complete and assist accompaniment chords’ arrangement. Also, through music feature extraction, automatic chord label construction, and model construction and training, the whole system finally has the ability of automatic accompaniment chord arrangement for the main melody. Based on the research of automatic chord label construction method and the characteristics of MIDI data format, a chord analysis method based on interval difference is proposed to construct chord labels of the whole track and realize the construction of automatic chord labels. In this study, the hidden Markov model is constructed according to the chord types, in which the input features are the improved theme PCP features proposed in this paper, and the input labels are the label data set constructed by the automated method proposed in this paper. After the training is completed, the PCP features of the theme to be predicted and improved are input to generate the accompaniment chords of the final arrangement. Through PCP features and template-matching model, the system designed in this paper improves the matching accuracy of the generated chords compared with that generated by the traditional method.
- Published
- 2021
33. Finger-Vein Recognition Using Bidirectional Feature Extraction and Transfer Learning
- Author
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Tong Wei, Yalei Hu, Sen Lin, Xinru Zhou, Tao Zhiyong, and Zhixue Xu
- Subjects
Biometrics ,Artificial neural network ,Article Subject ,business.industry ,Computer science ,General Mathematics ,Feature extraction ,General Engineering ,Feature recognition ,020206 networking & telecommunications ,Pattern recognition ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Finger vein recognition ,Support vector machine ,0202 electrical engineering, electronic engineering, information engineering ,Feature (machine learning) ,QA1-939 ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,Transfer of learning ,business ,Mathematics - Abstract
Accuracy and efficiency are essential topics in the current biometric feature recognition and security research. This paper proposes a deep neural network using bidirectional feature extraction and transfer learning to improve finger-vein recognition performance. Above all, we make a new finger-vein database with the opposite position information of the original one and adopt transfer learning to make the network suitable for our overall recognition framework. Next, the feature extractor is constructed by adjusting the unidirectional database’s parameters, capturing vein features from top to bottom and vice versa. Correspondingly, we concatenate the above two features to form the finger-veins’ bidirectional features, which are trained and classified by Support Vector Machines (SVM) to realize recognition. Experiments are conducted on the Malaysian Polytechnic University’s published database (FV-USM) and finger veins of Signal and Information Processing Laboratory (FV-SIPL). The accuracy of our proposed algorithm reaches 99.67% and 99.31%, which is significantly higher than the unidirectional recognition under each database. Compared with the algorithms cited in this paper, our proposed model based on bidirectional feature enjoys higher accuracy, faster recognition speed than the state-of-the-art frameworks, and excellent practical value.
- Published
- 2021
34. AIU-Net: An Efficient Deep Convolutional Neural Network for Brain Tumor Segmentation
- Author
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Yongchao Jiang, Mingquan Ye, Daobin Huang, and Xiaojie Lu
- Subjects
Article Subject ,Computer science ,business.industry ,General Mathematics ,Pooling ,General Engineering ,Pattern recognition ,Engineering (General). Civil engineering (General) ,Convolutional neural network ,Convolution ,Feature (computer vision) ,QA1-939 ,Segmentation ,Pyramid (image processing) ,Artificial intelligence ,TA1-2040 ,business ,Encoder ,Mathematics ,Block (data storage) - Abstract
Automatic and accurate segmentation of brain tumors plays an important role in the diagnosis and treatment of brain tumors. In order to improve the accuracy of brain tumor segmentation, an improved multimodal MRI brain tumor segmentation algorithm based on U-net is proposed in this paper. In the original U-net, the contracting path uses the pooling layer to reduce the resolution of the feature image and increase the receptive field. In the expanding path, the up sampling is used to restore the size of the feature image. In this process, some details of the image will be lost, leading to low segmentation accuracy. This paper proposes an improved convolutional neural network named AIU-net (Atrous-Inception U-net). In the encoder of U-net, A-inception (Atrous-inception) module is introduced to replace the original convolution block. The A-inception module is an inception structure with atrous convolution, which increases the depth and width of the network and can expand the receptive field without adding additional parameters. In order to capture the multiscale features, the atrous spatial pyramid pooling module (ASPP) is introduced. The experimental results on the BraTS (the multimodal brain tumor segmentation challenge) dataset show that the dice score obtained by this method is 0.93 for the enhancing tumor region, 0.86 for the whole tumor region, and 0.92 for the tumor core region, and the segmentation accuracy is improved.
- Published
- 2021
35. Data Analysis of Physical Fitness Monitoring Based on Mathematical Models
- Author
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Xinhua Yang, Junwu Suo, Cuixiang Guo, Chunguang Xu, and Liping Zhang
- Subjects
Article Subject ,Computer science ,Differential equation ,General Mathematics ,Physical fitness ,Stability (learning theory) ,02 engineering and technology ,Machine learning ,computer.software_genre ,01 natural sciences ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,0101 mathematics ,Equilibrium point ,Mathematical model ,business.industry ,Work (physics) ,General Engineering ,Physics::Physics Education ,Statistical model ,Engineering (General). Civil engineering (General) ,010101 applied mathematics ,Flow (mathematics) ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics - Abstract
Physical monitoring and analysis are of great significance to improve national physical fitness. The main work of this paper is that the physical health level of college students is studied and analysed by using a statistical model and mathematical model. According to the characteristics of the collected data, different mathematical models are established. Firstly, the grey correlation model is used to analyse the correlation between pull-up and other physical fitness indexes. Then, based on the classification of college students and the influence and flow law of interclass crowd, a differential equation system is established based on the LMC model. By analysing the existence and stability of the equilibrium point of the system, as well as the possible folding bifurcation and backward bifurcation at the equilibrium point, this paper makes qualitative and quantitative research on the trend of college students’ physical exercise on campus.
- Published
- 2021
36. Optimization of Ultrasound Information Imaging Algorithm in Cardiovascular Disease Based on Image Enhancement
- Author
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Jue Wu, Mehdi Gheisari, Ali Akbar Movassagh, Ashutosh Sharma, Gaurav Dhiman, Hongping Ou, Min Pei, Li Liu, Alia Asheralieva, and Yongfu Shao
- Subjects
Article Subject ,Heuristic (computer science) ,Computer science ,General Mathematics ,media_common.quotation_subject ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Image processing ,02 engineering and technology ,030218 nuclear medicine & medical imaging ,Image (mathematics) ,03 medical and health sciences ,0302 clinical medicine ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,Contrast (vision) ,Computer vision ,media_common ,Interpretability ,business.industry ,Ultrasound ,General Engineering ,Engineering (General). Civil engineering (General) ,020201 artificial intelligence & image processing ,Artificial intelligence ,Enhanced Data Rates for GSM Evolution ,TA1-2040 ,business ,Energy (signal processing) ,Mathematics - Abstract
To improve the interpretability or perception of information in images for human viewers is the main goal of image enhancement. Aiming at the problem that image edges are difficult to determine due to artefacts, plaques, and vascular branches in cardiovascular ultrasound, an edge ultrasound imaging detection algorithm based on spatial-frequency-domain image enhancement is proposed to improve the clarity of ultrasound images. Firstly, this paper uses the space-frequency-domain enhancement algorithm to enhance the image. This algorithm overcomes the problem of low contrast of conventional algorithms. The enhanced data matrix is used as the cost matrix, and then, the heuristic image search method is used to search the image of the cost matrix. The results show that the use of spatial-frequency-domain image ultrasound imaging algorithm can improve the contrast and sharpness of ultrasound images of cardiovascular disease, which can make the middle edge of the image clearer, the detection accuracy rate is increased to 92.76%, and the ultrasound of cardiovascular disease is improved. The edge of the image gets accuracy. The paper confirms that the ultrasound imaging algorithm based on spatial-frequency-domain image enhancement is worthy of application in clinical ultrasound image processing. The performance of the proposed technique is 32.54%, 75.30%, 21.19%, 21.26%, and 11.10% better than the existing technique in terms of edge energy, detail energy, sharpness, contrast, and information entropy, respectively.
- Published
- 2021
37. Nonfrontal Expression Recognition in the Wild Based on PRNet Frontalization and Muscle Feature Strengthening
- Author
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Tianyang Cao, Jiamin Chen, and Chang Liu
- Subjects
Facial expression ,Article Subject ,Computer science ,business.industry ,General Mathematics ,General Engineering ,020207 software engineering ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Expression (mathematics) ,Facial expression recognition ,Feature (computer vision) ,Face (geometry) ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,020201 artificial intelligence & image processing ,Computer vision ,Artificial intelligence ,TA1-2040 ,business ,Muscle movement ,Mathematics - Abstract
Nonfrontal facial expression recognition in the wild is the key for artificial intelligence and human-computer interaction. However, it is easy to be disturbed when changing head pose. Therefore, this paper presents a face rebuilding method to solve this problem based on PRNet, which can build 3D frontal face for 2D head photo with any pose. However, expression is still difficult to be recognized, because facial features weakened after frontalization, which had been widely reported by previous studies. It can be proved that all muscle parameters in frontalization face are more weakened than those of real face, except muscle moving direction on each small area. Thus, this paper also designed muscle movement rebuilding and intensifying method, and through 3D face contours and Fréchet distance, muscular moving directions on each muscle area are extracted and muscle movement is strengthened following these moving directions to intensify the whole face expression. Through this way, nonfrontal facial expression can be recognized effectively.
- Published
- 2021
38. Parallel Processing Method of Inertial Aerobics Multisensor Data Fusion
- Author
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Ting Zhang and Hongda Zhang
- Subjects
Article Subject ,Computer science ,General Mathematics ,02 engineering and technology ,Accelerometer ,01 natural sciences ,Sliding window protocol ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,Aerobic exercise ,Computer vision ,business.industry ,010401 analytical chemistry ,General Engineering ,Filter (signal processing) ,Kalman filter ,Sensor fusion ,Engineering (General). Civil engineering (General) ,0104 chemical sciences ,Feature (computer vision) ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Digital filter ,Mathematics - Abstract
Aerobics is one of the main contents of physical education, which has a positive role in promoting the health of young people. This paper mainly studies the parallel processing method of inertial aerobics multisensor data fusion. In this paper, an aerobics exercise system is designed, which uses digital filter to remove the noise generated in the process of exercise. In this paper, Kalman filter is used to filter the pulse error of accelerometer, and the data structure of unidirectional link is used to achieve the effect of sliding window, which can reduce the memory cost to the greatest extent. In this paper, the region of moving object is determined by horizontal and vertical projection of binary symmetric difference image. At the same time, the optimal feature combination is selected from the reduced features by feature subset selection, and the classification algorithm is used as the evaluation function in the optimization process. Finally, the collected data are tested, analyzed, and sorted out. The experimental data show that, after calibrating the sensor data, the static x-axis and y-axis data are about 0 g, and the z-axis data are about 1 g, which is closer to the real value. The results show that the attitude data collected by the inertial sensor can be stably transmitted to the software of the computer wirelessly for attitude reconstruction, and the recognition of each attitude and parameter has reached a high accuracy.
- Published
- 2021
39. Step-Counting Function of Adolescent Physical Training APP Based on Artificial Intelligence
- Author
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Cong Du
- Subjects
Article Subject ,business.industry ,Computer science ,020209 energy ,General Mathematics ,Interface (computing) ,General Engineering ,Sample (statistics) ,Functional requirement ,Usability ,02 engineering and technology ,010501 environmental sciences ,Engineering (General). Civil engineering (General) ,01 natural sciences ,Data type ,Test (assessment) ,User experience design ,Heuristic evaluation ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,Artificial intelligence ,TA1-2040 ,business ,Mathematics ,0105 earth and related environmental sciences - Abstract
With the rapid development of the information age, Internet and other technologies have been making progress, people’s fitness awareness has been gradually enhanced, and sports fitness app has emerged as the times require. This paper mainly studies the step-counting function of physical training app for teenagers based on artificial intelligence. This paper uses the modular development method to achieve the functional requirements of the system as the goal, respectively, for parameter management, website configuration, system log, interface security settings, SMS configuration, WeChat template message and several functional modules to achieve system configuration. In this paper, three types of sensors are used to analyze the data changes in the process of walking through three types of data, and different weights are given as the results of step-counting. When the peak value of sensor data is measured, only the peak value of the primary axial data of each sensor is analyzed, which should be determined according to the actual axial value of the sensor. In this paper, the users’ evaluation indexes of sports fitness app are divided into two groups: importance and satisfaction, so the obtained data are directly divided into two groups: importance and satisfaction of user experience indexes of sports fitness app, and the two groups of data are matched with the sample t test to ensure the scientific conclusion. Finally, the advantages and disadvantages of the user experience of college students’ sports fitness app are analyzed through IPA analysis. Heuristic evaluation is carried out on the step app to score the second-level usability index of the app. The first-level usability index score and the total usability score of the step app are obtained by calculation. There is not much difference between male and female students who use sports apps. Among them, 288 are male students, accounting for 58.2% of the total and 16.4% are female students. The results show that the use of artificial intelligence technology can reduce the overall energy consumption of step-counting algorithm, so as to achieve an energy-saving step-counting algorithm.
- Published
- 2021
40. A Novel Group Decision-Making Approach for Hesitant Fuzzy Linguistic Term Sets and Its Application to VIKOR
- Author
-
Xiuli Geng, Yunting Jin, and Yongzheng Zhang
- Subjects
0209 industrial biotechnology ,VIKOR method ,Article Subject ,business.industry ,Computer science ,General Mathematics ,General Engineering ,02 engineering and technology ,Interval (mathematics) ,Engineering (General). Civil engineering (General) ,Fuzzy logic ,Group decision-making ,020901 industrial engineering & automation ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,020201 artificial intelligence & image processing ,Rough set ,Artificial intelligence ,TA1-2040 ,business ,Representation (mathematics) ,Mathematics - Abstract
This paper develops a novel group decision-making (GDM) approach for solving multiple-criteria group decision-making (MCGDM) problems with uncertainty. The hesitant fuzzy linguistic term sets (HFLTSs) are applied to elicit the decision makers’ linguistic preferences due to their distinguished efficiency and flexibility in representing uncertainty. However, the existing context-free grammar for linguistic description cannot allow generating the linguistic expressions completely free to limit the richness of HFLTSs, and the related methods for dealing with HFLTSs also have limitations in aggregating HFLTSs with different lengths and types. Therefore, this paper proposes extended context-free grammar and a novel GDM approach for HFLTSs, considering the advantages of the rough set theory and OWA operators. The rough set theory can manage the uncertainty existing in the fuzzy representation and deal with HFLTSs represented by the 2-tuple fuzzy linguistic model to get rough number sets. The OWA operator can aggregate these sets with different numbers of elements into an interval simply and objectively. Then, an extended VIKOR method based on the proposed GDM approach for HFLTSs is presented to solve the MCGDM problems. Finally, two examples are given to illustrate the applicability and validity of the developed GDM approach and the hesitant VIKOR method through sensitivity and comparison analysis with other existing approaches.
- Published
- 2020
41. Automatic Determination of Clustering Centers for 'Clustering by Fast Search and Find of Density Peaks'
- Author
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Yi Huang, Xiangqiang Min, and Yehua Sheng
- Subjects
0209 industrial biotechnology ,Article Subject ,Computer science ,business.industry ,General Mathematics ,General Engineering ,Pattern recognition ,02 engineering and technology ,Object (computer science) ,Engineering (General). Civil engineering (General) ,020901 industrial engineering & automation ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Cluster analysis ,Mathematics - Abstract
Dividing abstract object sets into multiple groups, called clustering, is essential for effective data mining. Clustering can find innate but unknown real-world knowledge that is inaccessible by any other means. Rodriguez and Laio have published a paper about a density-based fast clustering algorithm in Science called CFSFDP. CFSFDP is a highly efficient algorithm that clusters objects by using fast searching of density peaks. But with CFSFDP, the essential second step of finding clustering centers must be done manually. Furthermore, when the amount of data objects increases or a decision graph is complicated, determining clustering centers manually is difficult and time consuming, and clustering accuracy reduces sharply. To solve this problem, this paper proposes an improved clustering algorithm, ACDPC, that is based on data detection, which can automatically determinate clustering centers without manual intervention. First, the algorithm calculates the comprehensive metrics and sorts them based on the CFSFDP method. Second, the distance between the sorted objects is used to judge whether they are the correct clustering centers. Finally, the remaining objects are grouped into clusters. This algorithm can efficiently and automatically determine clustering centers without calculating additional variables. We verified ACDPC using three standard datasets and compared it with other clustering algorithms. The experimental results show that ACDPC is more efficient and robust than alternative methods.
- Published
- 2020
42. Automatic Modulation Classification Based on Deep Learning for Software-Defined Radio
- Author
-
Shaojing Su, Xudong Wen, Bei Sun, Peng Wu, Jinhui Zhao, and Junyu Wei
- Subjects
Artificial neural network ,Article Subject ,Computer science ,business.industry ,General Mathematics ,Deep learning ,General Engineering ,020206 networking & telecommunications ,02 engineering and technology ,Software-defined radio ,Engineering (General). Civil engineering (General) ,Residual neural network ,Identification (information) ,Computer engineering ,Rate of convergence ,Modulation ,Kernel (statistics) ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
With the development of artificial intelligence technology, deep learning has been applied to automatic modulation classification (AMC) and achieved very good results. In this paper, we introduced an improved deep neural architecture for implementing radio signal identification tasks, which is an important facet of constructing the spectrum-sensing capability required by software-defined radio. The architecture of the proposed network is based on the Inception-ResNet network by changing the several kernel sizes and the repeated times of modules to adapt to modulation classification. The modules in the proposed architecture are repeated more times to increase the depth of neural network and the model’s ability to learn features. The modules in the proposed network combine the advantages of Inception network and ResNet, which have faster convergence rate and larger receptive field. The proposed network is proved to have excellent performance for modulation classification through the experiment in this paper. The experiment shows that the classification accuracy of the proposed method is highest with the varying SNR among the six methods and it peaks at 93.76% when the SNR is 14 dB, which is 6 percent higher than that of LSTM and 13 percent higher than that of MentorNet, Inception, and ResNet purely. Besides, the average accuracy from 0 to 18 dB of the proposed method is 3 percent higher than that of GAN network. It will provide a new idea for modulation classification aiming at distraction time signal.
- Published
- 2020
43. Research on Active Intelligent Perception Technology of Vessel Situation Based on Multisensor Fusion
- Author
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Yong Yin, Jing Chen, Kexin Bao, Ruixin Ma, and Zilong Li
- Subjects
Article Subject ,Computer science ,General Mathematics ,Gaussian ,Point cloud ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,02 engineering and technology ,Set (abstract data type) ,symbols.namesake ,0202 electrical engineering, electronic engineering, information engineering ,Canny edge detector ,QA1-939 ,Computer vision ,Background subtraction ,business.industry ,General Engineering ,020207 software engineering ,Engineering (General). Civil engineering (General) ,Fuzzy mathematics ,symbols ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,Focus (optics) ,business ,Membership function ,Mathematics - Abstract
In this paper, we focus on the safety supervision of inland vessels. This paper especially aims at studying the vessel target detection and dynamic tracking algorithm based on computer vision and the target fusion algorithm based on multisensor. For the vessel video target detection and tracking, this paper analyzes the current widely used methods and theories. Additionally, facing the application scenarios and characteristics of inland vessels, a comprehensive vessel video target detection algorithm is proposed in this paper. It is combined with a three-frame difference method based on Canny edge detection and a background subtraction method based on mixed Gaussian background modeling. Besides, for the multisensor target fusion, the processing method of laser point cloud data and automatic identification system (AIS) data is analyzed in this paper. Based on the idea of fuzzy mathematics, this paper proposes a method for calculating the fuzzy correlation matrix with normal membership function, which realizes the fusion of vessel track features of laser point cloud data and AIS data under dynamic video correction. Finally, through this method, a set of vessel situation active intelligent perception systems based on multisensor fusion was developed. Experiments show that this method has better environmental applicability and detection accuracy than traditional manual detection and any single monitoring method.
- Published
- 2020
44. Dim and Small Targets Detection in Sequence Images Based on Spatiotemporal Motion Characteristics
- Author
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Xu Zhiyong, Hongwei Guo, Fan Xiangsuo, and Biao Li
- Subjects
Article Subject ,Computer science ,General Mathematics ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,02 engineering and technology ,01 natural sciences ,Image (mathematics) ,010309 optics ,0103 physical sciences ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,Time domain ,Differential (infinitesimal) ,Sequence ,Pixel ,business.industry ,General Engineering ,Pattern recognition ,Filter (signal processing) ,Engineering (General). Civil engineering (General) ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Energy (signal processing) ,Mathematics - Abstract
In order to effectively enhance the low detection rates of dim and small targets caused by dynamic backgrounds, this paper proposes a detection algorithm for dim and small targets in sequence images based on spatiotemporal motion characteristics. With regard to the spatial domain, this paper proposes an improved anisotropic background filtering algorithm that makes full use of the gradient differences between the target and the background pixels in the eight directions of the spatial domain and selects the mean value of the three directions with the lowest diffusion function in the eight directions as the differential filter to obtain a differential image. Then, the paper proposes a directional energy correlation enhancement algorithm in the time domain. Finally, based on the above preprocessing operations, we construct a dim and small targets detection algorithm in sequence images with local motion characteristics, which achieves target detection by determining the number of occurrences of the target, the number of displacements, and the total cumulative area in these sequential images. Experiments show that the proposed detection algorithm in this paper can effectively improve the detection of dim and small targets in dynamic scenes.
- Published
- 2020
45. A Deep Convolutional Neural Network Model for Intelligent Discrimination between Coal and Rocks in Coal Mining Face
- Author
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Chao Tan, Xiong Xiangxiang, Lei Si, and Zhongbin Wang
- Subjects
Normalization (statistics) ,0303 health sciences ,Article Subject ,Computer science ,business.industry ,General Mathematics ,General Engineering ,Coal mining ,Pattern recognition ,ComputerApplications_COMPUTERSINOTHERSYSTEMS ,02 engineering and technology ,Overfitting ,Engineering (General). Civil engineering (General) ,Regularization (mathematics) ,Convolutional neural network ,03 medical and health sciences ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,020201 artificial intelligence & image processing ,Coal ,Artificial intelligence ,TA1-2040 ,business ,Mathematics ,030304 developmental biology - Abstract
Accurate identification of the distribution of coal seam is a prerequisite for realizing intelligent mining of shearer. This paper presents a novel method for identifying coal and rock based on a deep convolutional neural network (CNN). Three regularization methods are introduced in this paper to solve the overfitting problem of CNN and speed up the convergence: dropout, weight regularization, and batch normalization. Then the coal-rock image information is enriched by means of data augmentation, which significantly improves the performance. The shearer cutting coal-rock experiment system is designed to collect more real coal-rock images, and some experiments are provided. The experiment results indicate that the network we designed has better performance in identifying the coal-rock images.
- Published
- 2020
46. Cross-Border E-Commerce Personalized Recommendation Based on Fuzzy Association Specifications Combined with Complex Preference Model
- Author
-
Dan Xiang and Zhijie Zhang
- Subjects
Article Subject ,Computer science ,Generalization ,General Mathematics ,Association (object-oriented programming) ,02 engineering and technology ,E-commerce ,Recommender system ,Machine learning ,computer.software_genre ,Fuzzy logic ,020204 information systems ,0202 electrical engineering, electronic engineering, information engineering ,Collaborative filtering ,QA1-939 ,business.industry ,General Engineering ,Engineering (General). Civil engineering (General) ,Preference ,Constraint (information theory) ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,computer ,Mathematics - Abstract
Since cross-border e-commerce involves the export and import of commodities, it is affected by many policies and regulations, resulting in some special requirements for the recommendation system, which makes the traditional collaborative filtering recommendation algorithm less effective for the cross-border e-commerce recommendation system. To address this issue, a simple yet effective cross-border e-commerce personalized recommendation is proposed in this paper, which integrates fuzzy association rule and complex preference into a recommendation model. Under the constraint of fuzzy association rules, a hybrid recommendation model based on user complex preference features is constructed to mine user preference features, and personalized commodities recommendation is realized according to user behavior preference. Compared with the traditional recommendation algorithm, the improved algorithm reduces the impact of data sparsity. The experiment also verifies that the improved fuzzy association rule algorithm has a better recommendation effect than the existing state-of-the-art recommendation models. The recommendation system proposed in this paper has better generalization and has the performance to be applied to real-life scenarios.
- Published
- 2020
47. An Electronic Component Recognition Algorithm Based on Deep Learning with a Faster SqueezeNet
- Author
-
Genke Yang, Jiliang Luo, Jianan He, and Yuanyuan Xu
- Subjects
0209 industrial biotechnology ,Article Subject ,Computational complexity theory ,Receiver operating characteristic ,Computer science ,business.industry ,General Mathematics ,Deep learning ,General Engineering ,Pattern recognition ,02 engineering and technology ,Engineering (General). Civil engineering (General) ,Support vector machine ,020901 industrial engineering & automation ,visual_art ,Electronic component ,Principal component analysis ,0202 electrical engineering, electronic engineering, information engineering ,visual_art.visual_art_medium ,QA1-939 ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
Electronic component recognition plays an important role in industrial production, electronic manufacturing, and testing. In order to address the problem of the low recognition recall and accuracy of traditional image recognition technologies (such as principal component analysis (PCA) and support vector machine (SVM)), this paper selects multiple deep learning networks for testing and optimizes the SqueezeNet network. The paper then presents an electronic component recognition algorithm based on the Faster SqueezeNet network. This structure can reduce the size of network parameters and computational complexity without deteriorating the performance of the network. The results show that the proposed algorithm performs well, where the Receiver Operating Characteristic Curve (ROC) and Area Under the Curve (AUC), capacitor and inductor, reach 1.0. When the FPR is less than or equal 10 − 6 level, the TPR is greater than or equal to 0.99; its reasoning time is about 2.67 ms, achieving the industrial application level in terms of time consumption and performance.
- Published
- 2020
48. A Computer Vision-Based Real-Time Load Perception Method for Belt Conveyors
- Author
-
Manshan Zhou, Hao Shi, and Mengchao Zhang
- Subjects
Article Subject ,Computer science ,business.industry ,General Mathematics ,media_common.quotation_subject ,020208 electrical & electronic engineering ,General Engineering ,Conveyor belt ,ComputerApplications_COMPUTERSINOTHERSYSTEMS ,02 engineering and technology ,021001 nanoscience & nanotechnology ,Engineering (General). Civil engineering (General) ,Generator (circuit theory) ,Perception ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,Computer vision ,Artificial intelligence ,TA1-2040 ,0210 nano-technology ,business ,Mathematics ,media_common - Abstract
Real-time load detection method for belt conveyors based on computer vision is the research topic of this paper. A belt conveyor system equipped with cameras and a laser generator is used as the test apparatus. As the basis for conveyor intelligent speed regulation, two methods from different angles to perceive the load of conveyor belt were proposed, applied, and compared in this paper. Method 1 is based on the area proportion and method 2 is the detection based on laser-based computer vision technology. Laboratory experiments show that both methods can well detect the load on the conveyor belt. Method 2 is more economical and practical under the background of existing technology, also compared to the method 1, which provides a new idea and theoretical basis for the energy-saving control and intelligent development of the conveyor.
- Published
- 2020
49. Study on the Method of Fundus Image Generation Based on Improved GAN
- Author
-
Jiayou Shen, Jian Zhang, Jifeng Guo, Fan Yang, and Zhiqi Pang
- Subjects
Article Subject ,Computer science ,business.industry ,General Mathematics ,Deep learning ,Fundus image ,General Engineering ,Process (computing) ,Pattern recognition ,02 engineering and technology ,Fundus (eye) ,Engineering (General). Civil engineering (General) ,Image (mathematics) ,Set (abstract data type) ,020204 information systems ,0202 electrical engineering, electronic engineering, information engineering ,QA1-939 ,020201 artificial intelligence & image processing ,Artificial intelligence ,TA1-2040 ,business ,Mathematics - Abstract
With the continuous development of deep learning, the performance of the intelligent diagnosis system for ocular fundus diseases has been significantly improved, but during the system training process, problems like lack of fundus samples and uneven sample distribution (the number of disease samples is much smaller than the number of normal samples) have become increasingly prominent. In view of the previous issues, this paper proposes a method for generating fundus images based on “Combined GAN” (Com-GAN), which can generate both normal fundus images and fundus images with hard exudates, so that the sample distribution can be more even, while the fundus data are expanded. First, this paper uses existing images to train a Com-GAN, which consists of two subnetworks: im-WGAN and im-CGAN; then, it uses the trained model to generate fundus images, then performs qualitative and quantitative evaluation on the generated images, and adds the images to the original image set to expand the datasets; finally, based on this expanded training set, it trains the hard exudate detection system. The expanded datasets effectively improve the generalization ability of the system on the public datasets DIARETDB1 and e-ophtha EX, thereby verifying the effectiveness of the proposed method.
- Published
- 2020
50. A Semieager Classifier for Open Relation Extraction
- Author
-
Xiaojie Wang and Peiqian Liu
- Subjects
Word embedding ,Article Subject ,business.industry ,Computer science ,lcsh:Mathematics ,General Mathematics ,Deep learning ,General Engineering ,02 engineering and technology ,Eager learning ,lcsh:QA1-939 ,Machine learning ,computer.software_genre ,Relationship extraction ,Lazy learning ,lcsh:TA1-2040 ,020204 information systems ,Classifier (linguistics) ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,lcsh:Engineering (General). Civil engineering (General) ,business ,Classifier (UML) ,computer - Abstract
A variety of open relation extraction systems have been developed in the last decade. And deep learning, especially with attention model, has gained much success in the task of relation classification. Nevertheless, there is, yet, no research reported on classifying open relation tuples to our knowledge. In this paper, we propose a novel semieager learning algorithm (SemiE) to tackle the problem of open relation classification. Different from the eager learning approaches (e.g., ANNs) and the lazy learning approaches (e.g., kNN), the SemiE offers the benefits of both categories of learning scheme, with its significantly lower computational cost (O(n)). This algorithm can also be employed in other classification tasks. Additionally, this paper presents an adapted attention model to transform relation phrases into vectors by using word embedding. The experimental results on two benchmark datasets show that our method outperforms the state-of-the-art methods in the task of open relation classification.
- Published
- 2018
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