8 results on '"Lu, Songfeng"'
Search Results
2. SIN: Superpixel Interpolation Network
- Author
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Yuan, Qing, Lu, Songfeng, Huang, Yan, Sha, Wuxin, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Woeginger, Gerhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Pham, Duc Nghia, editor, Theeramunkong, Thanaruk, editor, Governatori, Guido, editor, and Liu, Fenrong, editor
- Published
- 2021
- Full Text
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3. Enhancing Intrusion Detection Systems for IoT and Cloud Environments Using a Growth Optimizer Algorithm and Conventional Neural Networks.
- Author
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Fatani, Abdulaziz, Dahou, Abdelghani, Abd Elaziz, Mohamed, Al-qaness, Mohammed A. A., Lu, Songfeng, Alfadhli, Saad Ali, and Alresheedi, Shayem Saleh
- Subjects
DEEP learning ,ALGORITHMS ,METAHEURISTIC algorithms ,OPTIMIZATION algorithms ,MACHINE learning ,FEATURE selection - Abstract
Intrusion detection systems (IDS) play a crucial role in securing networks and identifying malicious activity. This is a critical problem in cyber security. In recent years, metaheuristic optimization algorithms and deep learning techniques have been applied to IDS to improve their accuracy and efficiency. Generally, optimization algorithms can be used to boost the performance of IDS models. Deep learning methods, such as convolutional neural networks, have also been used to improve the ability of IDS to detect and classify intrusions. In this paper, we propose a new IDS model based on the combination of deep learning and optimization methods. First, a feature extraction method based on CNNs is developed. Then, a new feature selection method is used based on a modified version of Growth Optimizer (GO), called MGO. We use the Whale Optimization Algorithm (WOA) to boost the search process of the GO. Extensive evaluation and comparisons have been conducted to assess the quality of the suggested method using public datasets of cloud and Internet of Things (IoT) environments. The applied techniques have shown promising results in identifying previously unknown attacks with high accuracy rates. The MGO performed better than several previous methods in all experimental comparisons. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
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4. FedCRMW: Federated model ownership verification with compression-resistant model watermarking.
- Author
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Nie, Hewang and Lu, Songfeng
- Subjects
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FEDERATED learning , *DATA privacy , *WATERMARKS , *COPYRIGHT , *DIGITAL watermarking , *DATA compression - Abstract
Federated Learning is a collaborative machine learning paradigm that allows training models on decentralized data while preserving data privacy. It has gained significant attention due to its potential applications in various domains. However, the issue of protecting model copyright in the Federated Learning setting has become a critical concern. In this paper, we propose a novel watermarking framework called FedCRMW (Federal Learning Compression-Resistance Model Watermark) to address the challenge of model copyright protection in Federated Learning. FedCRMW embeds unique watermarks into client-contributed models, ensuring ownership, integrity, and authenticity. The framework leverages client-specific identifiers and exclusive logos to construct trigger sets for watermark embedding, enhancing security and traceability. One of the key advantages of FedCRMW is its optimization for the common data compression challenge in the Federated Learning scenario. By utilizing compressed data inputs for copyright verification, we achieve an efficient watermark validation process and reduce communication and storage overheads. Experimental results demonstrate the effectiveness of FedCRMW in terms of watermark success rate, imperceptibility, robustness against attacks, and resistance to model compression and pruning. Compared to existing watermarking methods, FedCRMW exhibits superior performance in the Federated Learning context. • FedCRMW: Robust watermarking for Federated Learning models. • Novel trigger dataset construction scheme for watermarking. • Enhanced robustness with feature-consistent training. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
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5. Advanced metaheuristic optimization techniques in applications of deep neural networks: a review.
- Author
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Abd Elaziz, Mohamed, Dahou, Abdelghani, Abualigah, Laith, Yu, Liyang, Alshinwan, Mohammad, Khasawneh, Ahmad M., and Lu, Songfeng
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METAHEURISTIC algorithms ,MATHEMATICAL optimization ,SWARM intelligence ,MACHINE learning ,DEEP learning ,TASK performance - Abstract
Deep neural networks (DNNs) have evolved as a beneficial machine learning method that has been successfully used in various applications. Currently, DNN is a superior technique of extracting information from massive sets of data in a self-organized method. DNNs have different structures and parameters, which are usually produced for particular applications. Nevertheless, the training procedures of DNNs can be protracted depending on the given application and the size of the training set. Further, determining the most precise and practical structure of a deep learning method in a reasonable time is a possible problem related to this procedure. Meta-heuristics techniques, such as swarm intelligence (SI) and evolutionary computing (EC), represent optimization frames with specific theories and objective functions. These methods are adjustable and have been demonstrated their effectiveness in various applications; hence, they can optimize the DNNs models. This paper presents a comprehensive survey of the recent optimization methods (i.e., SI and EC) employed to enhance DNNs performance on various tasks. This paper also analyzes the importance of optimization methods in generating the optimal hyper-parameters and structures of DNNs in taking into consideration massive-scale data. Finally, several potential directions that still need improvements and open problems in evolutionary DNNs are identified. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
6. Advanced Feature Extraction and Selection Approach Using Deep Learning and Aquila Optimizer for IoT Intrusion Detection System.
- Author
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Fatani, Abdulaziz, Dahou, Abdelghani, Al-qaness, Mohammed A. A., Lu, Songfeng, and Elaziz, Mohamed Abd
- Subjects
FEATURE selection ,SWARM intelligence ,INTERNET of things ,MACHINE learning ,DEEP learning ,FEATURE extraction ,ALGORITHMS - Abstract
Developing cyber security is very necessary and has attracted considerable attention from academy and industry organizations worldwide. It is also very necessary to provide sustainable computing for the the Internet of Things (IoT). Machine learning techniques play a vital role in the cybersecurity of the IoT for intrusion detection and malicious identification. Thus, in this study, we develop new feature extraction and selection methods and for the IDS system using the advantages of the swarm intelligence (SI) algorithms. We design a feature extraction mechanism depending on the conventional neural networks (CNN). After that, we present an alternative feature selection (FS) approach using the recently developed SI algorithm, Aquila optimizer (AQU). Moreover, to assess the quality of the developed IDS approach, four well-known public datasets, CIC2017, NSL-KDD, BoT-IoT, and KDD99, were used. We also considered extensive comparisons to other optimization methods to verify the competitive performance of the developed method. The results show the high performance of the developed approach using different evaluation indicators. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
7. Gender Classification Using Proposed CNN-Based Model and Ant Colony Optimization.
- Author
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Abbas, Farhat, Yasmin, Mussarat, Fayyaz, Muhammad, Abd Elaziz, Mohamed, Lu, Songfeng, and El-Latif, Ahmed A. Abd
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ANT algorithms ,PEDESTRIANS ,DEEP learning ,GENDER ,CONTENT-based image retrieval ,ANTS ,MULTIMEDIA systems - Abstract
Pedestrian gender classification is one of the key assignments of pedestrian study, and it finds practical applications in content-based image retrieval, population statistics, human–computer interaction, health care, multimedia retrieval systems, demographic collection, and visual surveillance. In this research work, gender classification was carried out using a deep learning approach. A new 64-layer architecture named 4-BSMAB derived from deep AlexNet is proposed. The proposed model was trained on CIFAR-100 dataset utilizing SoftMax classifier. Then, features were obtained from applied datasets with this pre-trained model. The obtained feature set was optimized with ant colony system (ACS) optimization technique. Various classifiers of SVM and KNN were used to perform gender classification utilizing the optimized feature set. Comprehensive experimentation was performed on gender classification datasets, and proposed model produced better results than the existing methods. The suggested model attained highest accuracy, i.e., 85.4%, and 92% AUC on MIT dataset, and best classification results, i.e., 93% accuracy and 96% AUC, on PKU-Reid dataset. The outcomes of extensive experiments carried out on existing standard pedestrian datasets demonstrate that the proposed framework outperformed existing pedestrian gender classification methods, and acceptable results prove the proposed model as a robust model. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
8. Deep learning-based forecasting model for COVID-19 outbreak in Saudi Arabia.
- Author
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Elsheikh, Ammar H., Saba, Amal I., Elaziz, Mohamed Abd, Lu, Songfeng, Shanmugan, S., Muthuramalingam, T., Kumar, Ravinder, Mosleh, Ahmed O., Essa, F.A., and Shehabeldeen, Taher A.
- Abstract
[Display omitted] COVID-19 outbreak has become a global pandemic that affected more than 200 countries. Predicting the epidemiological behavior of this outbreak has a vital role to prevent its spreading. In this study, long short-term memory (LSTM) network as a robust deep learning model is proposed to forecast the number of total confirmed cases, total recovered cases, and total deaths in Saudi Arabia. The model was trained using the official reported data. The optimal values of the model's parameters that maximize the forecasting accuracy were determined. The forecasting accuracy of the model was assessed using seven statistical assessment criteria, namely, root mean square error (RMSE), coefficient of determination (R2), mean absolute error (MAE), efficiency coefficient (EC), overall index (OI), coefficient of variation (COV), and coefficient of residual mass (CRM). A reasonable forecasting accuracy was obtained. The forecasting accuracy of the suggested model is compared with two other models. The first is a statistical based model called autoregressive integrated moving average (ARIMA). The second is an artificial intelligence based model called nonlinear autoregressive artificial neural networks (NARANN). Finally, the proposed LSTM model was applied to forecast the total number of confirmed cases as well as deaths in six different countries; Brazil, India, Saudi Arabia, South Africa, Spain, and USA. These countries have different epidemic trends as they apply different polices and have different age structure, weather, and culture. The social distancing and protection measures applied in different countries are assumed to be maintained during the forecasting period. The obtained results may help policymakers to control the disease and to put strategic plans to organize Hajj and the closure periods of the schools and universities. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
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