2,219 results on '"Crack Detection"'
Search Results
2. Monitoring of crack length growth on welded specimens by applying square wave inductive thermography
- Author
-
Toasa Caiza, Paul Dario, Shiozawa, Daiki, Murao, Yuya, Ummenhofer, Thomas, and Sakagami, Takahide
- Published
- 2025
- Full Text
- View/download PDF
3. An efficient out-of-distribution pixel-level crack detection framework using prior knowledge
- Author
-
Li, Hubing, Gao, Kang, Liang, Hanbin, Zhu, Hong, Yang, Zhiyuan, and Wang, Qiang
- Published
- 2024
- Full Text
- View/download PDF
4. Lightweight network for millimeter-level concrete crack detection with dense feature connection and dual attention
- Author
-
Ma, Xiao, Li, Yang, Yang, Zijiang, Li, Shaoqi, and Li, Yancheng
- Published
- 2024
- Full Text
- View/download PDF
5. A lightweight ground crack rapid detection method based on semantic enhancement
- Author
-
Yi, Bing, Long, Qing, Liu, Haiqiao, Gong, Zichao, and Yu, Jun
- Published
- 2024
- Full Text
- View/download PDF
6. Application of Machine Learning (ML)-based multi-classifications to identify corrosion fatigue cracking phenomena in Naval steel weldments
- Author
-
Srivastava, Vivek, Basu, B., and Prabhu, N.
- Published
- 2024
- Full Text
- View/download PDF
7. A novel passive wireless RFID sensor for localized surface crack characterization on metals
- Author
-
Suresh, Setti and Chakaravarthi, Geetha
- Published
- 2024
- Full Text
- View/download PDF
8. Robust unsupervised-learning based crack detection for stamped metal products
- Author
-
Zhang, Penghua, Ryu, Hojun, Miao, Yinan, Jo, Seungpyo, and Park, Gyuhae
- Published
- 2024
- Full Text
- View/download PDF
9. Simulation of the Back-Side Cracking of Nickel-Based Superalloy Turbine Blades with Eddy Current Testing
- Author
-
Yuan, Jia, Lei, Zihao, Xue, Xinhai, Chen, Hongen, Wen, Guangrui, Su, Yu, Chen, Xuefeng, Chaari, Fakher, Series Editor, Gherardini, Francesco, Series Editor, Ivanov, Vitalii, Series Editor, Haddar, Mohamed, Series Editor, Cavas-Martínez, Francisco, Editorial Board Member, di Mare, Francesca, Editorial Board Member, Kwon, Young W., Editorial Board Member, Tolio, Tullio A. M., Editorial Board Member, Trojanowska, Justyna, Editorial Board Member, Schmitt, Robert, Editorial Board Member, Xu, Jinyang, Editorial Board Member, Pham, Duc Truong, editor, Lei, Yaguo, editor, and Lou, Yanshan, editor
- Published
- 2025
- Full Text
- View/download PDF
10. AI Based Non-contact Crack Detection and Measurement in Concrete Pavements
- Author
-
Ranyal, Eshta, Ranyal, Vikrant, Jain, Kamal, di Prisco, Marco, Series Editor, Chen, Sheng-Hong, Series Editor, Vayas, Ioannis, Series Editor, Kumar Shukla, Sanjay, Series Editor, Sharma, Anuj, Series Editor, Kumar, Nagesh, Series Editor, Wang, Chien Ming, Series Editor, Cui, Zhen-Dong, Series Editor, Lu, Xinzheng, Series Editor, Desjardins, Serge, editor, Poitras, Gérard J., editor, El Damatty, Ashraf, editor, and Elshaer, Ahmed, editor
- Published
- 2025
- Full Text
- View/download PDF
11. Uncertainty Quantification for Deep Learning–Based Automatic Crack Detection in the Underwater Environment
- Author
-
Wu, Zihan, Hu, Zhen, Todd, Michael D., Zimmerman, Kristin B., Series Editor, Platz, Roland, editor, Flynn, Garrison, editor, Neal, Kyle, editor, and Ouellette, Scott, editor
- Published
- 2025
- Full Text
- View/download PDF
12. Research on Dam Crack Identification Method Based on Multi-source Information Fusion
- Author
-
Xin, Cun, Yang, Dangfeng, Liu, Xiaodong, Huang, Yong, Qian, Xueming, di Prisco, Marco, Series Editor, Chen, Sheng-Hong, Series Editor, Vayas, Ioannis, Series Editor, Kumar Shukla, Sanjay, Series Editor, Sharma, Anuj, Series Editor, Kumar, Nagesh, Series Editor, Wang, Chien Ming, Series Editor, Cui, Zhen-Dong, Series Editor, Lu, Xinzheng, Series Editor, Zheng, Sheng’an, editor, Taylor, Richard M., editor, Wu, Wenhao, editor, Nilsen, Bjorn, editor, and Zhao, Gensheng, editor
- Published
- 2025
- Full Text
- View/download PDF
13. Improving Crack Detection on Concrete Structures Using Real-World Data Augmentation for Deep Learning Convolutional Neural Networks
- Author
-
Tello-Gil, Carlos, Jabari, Shabnam, Waugh, Lloyd, Masry, Mark, McGinn, Jared, di Prisco, Marco, Series Editor, Chen, Sheng-Hong, Series Editor, Vayas, Ioannis, Series Editor, Kumar Shukla, Sanjay, Series Editor, Sharma, Anuj, Series Editor, Kumar, Nagesh, Series Editor, Wang, Chien Ming, Series Editor, Cui, Zhen-Dong, Series Editor, Lu, Xinzheng, Series Editor, Desjardins, Serge, editor, Poitras, Gérard J., editor, and Nik-Bakht, Mazdak, editor
- Published
- 2025
- Full Text
- View/download PDF
14. Crack detection in a beam using wavelet transform and photographic measurements
- Author
-
Nigam, Ravi and Singh, Sachin K.
- Published
- 2020
- Full Text
- View/download PDF
15. An automatic image processing based on Hough transform algorithm for pavement crack detection and classification
- Author
-
Matarneh, Sandra, Elghaish, Faris, Al-Ghraibah, Amani, Abdellatef, Essam, and Edwards, David John
- Published
- 2025
- Full Text
- View/download PDF
16. Computer vision-based cascade detection of peeling and cracking in masonry house walls.
- Author
-
Zhang, Chun, Lin, Shuai, Yu, Jian, and Zhang, Tongbo
- Subjects
- *
RURAL housing , *CASCADE connections , *COMPUTER vision , *MASONRY , *RURAL geography - Abstract
Self-built masonry structures are commonly used as houses in rural areas of the central plains of China. These structures pose significant safety risks due to the low level of self-building and non-standard designs. The primary type of damage to the walls of masonry houses is cracks, while the decorative layers of the walls may also experience peeling or cracking. The shapes, sizes, and surface characteristics of these damages are complex and unique to each type. To achieve fast identification of surface damage on masonry house walls, this paper proposes a cascade detection model that combines a multilevel cascade classifier with a parallel sub-segmentation network. The VGG16 neural network is used as the backbone for a multi-level series classifier. The model is trained by using a damage image set of the wall decorative layers in rural masonry houses. The classification of background and damage, as well as the classification of cracks and peels, are sequentially completed. Then, the parallel sub-segmentation model uses EfficientNet-B7 as the encoder and combines it with the U-Net framework skeleton to perform pixel-level segmentation of peeling and cracks. Finally, the output of parallel sub-segmentation networks is superimposed and fused to generate a complete image containing segmentation information of peeling and cracks. The cascade form network structure adopted in this model significantly reduces the training difficulty and enhances the model accuracy. Compared with Segformer and Deeplabv3+ network, the average IoU of the proposed method for on-site masonry wall images can be increased by 0.29 and 0.08, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
17. Quantitative evaluation of surface crack depth on notched bars with laser-infrared detection technology.
- Author
-
Xu, Jiayi, Zhang, Lijun, Wang, Hang, Yang, Ning, Luo, Kaiguang, and Yang, Jianming
- Subjects
- *
ARTIFICIAL neural networks , *SURFACE defects , *METAL fractures , *INFRARED lasers , *SURFACE cracks - Abstract
To achieve non-destructive detection of crack depth in the process of notching and cracking of metal bars in low-stress cropping, a quantitative detection method for crack depth of notched bars based on infrared thermography technology under laser excitation is proposed in this paper. Combined with physical experiments, a simulation model of the temperature distribution of the laser-excited bar is established for efficient data acquisition, and the temperature curves of the bar surface under laser excitation are analysed from the perspective of space and time. On this basis, the study selects the feature parameters of the three types of defects on the surface of the metal bar, namely notch, surface crack and crack of notch bottom. A backpropagation (BP) neural network model is established for crack depth by dividing the crack into two types of a notch with crack and unnotched crack, and compared with other common prediction models. The results show that the selected features can accurately characterise the cracks in this BP neural network model, and the detected error in crack depth assessment is less than 3%. Performance metrics are established to evaluate the model, which has good reliability under different noises. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
18. Binocular Video-Based Automatic Pixel-Level Crack Detection and Quantification Using Deep Convolutional Neural Networks for Concrete Structures.
- Author
-
Liu, Liqu, Shen, Bo, Huang, Shuchen, Liu, Runlin, Liao, Weizhang, Wang, Bin, and Diao, Shuo
- Subjects
CONCRETE construction ,CONVOLUTIONAL neural networks ,BINOCULAR vision ,DEEP learning ,CRACKING of concrete - Abstract
Crack detection and quantification play crucial roles in assessing the condition of concrete structures. Herein, a novel real-time crack detection and quantification method that leverages binocular vision and a lightweight deep learning model is proposed. In this methodology, the proposed method based on the following four modules is adopted: a lightweight classification algorithm, a high-precision segmentation algorithm, a semi-global block matching algorithm (SGBM), and a crack quantification technique. Based on the crack segmentation results, a framework is developed for quantitative analysis of the major geometric parameters, including crack length, crack width, and crack angle of orientation at the pixel level. Results indicate that, by incorporating channel attention and spatial attention mechanisms in the MBConv module, the detection accuracy of the improved EfficientNetV2 increased by 1.6% compared with the original EfficientNetV2. Results indicate that using the proposed quantification method can achieve low quantification errors of 2%, 4.5%, and 4% for the crack length, width, and angle of orientation, respectively. The proposed method can contribute to crack detection and quantification in practical use by being deployed on smart devices. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
19. An Electrical Method to Detect Both Crack Creation and Propagation in Solid Electrical Insulators †.
- Author
-
Niakan, Tara, Valdez-Nava, Zarel, and Malec, David
- Subjects
- *
DIELECTRIC materials , *FRACTURE mechanics , *CRACK propagation (Fracture mechanics) , *VOLTAGE , *POSITRONS - Abstract
Fracto-emission is the ejection of electrons and positive ions from matter undergoing a mechanical fracture. The creation and propagation of fractures in insulating material can generate an electrical signal that can be detected using a sufficiently fast signal recorder. The theoretical equations related to crack creation/propagation that induce an externally electric signal are detailed for two conditions: with and without an external applied electric voltage. Results from an experiment with no externally applied voltage are presented for fibreglass-reinforced epoxy laminate samples, in which current signals ranging from 50 mA to 100 mA are measured in a time frame of 200 ns. The signal-to-noise ratio is high enough to consider that the signal that was recorded is not a measurement artifact. This method may help to identify and track a crack propagating inside dielectric materials. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
20. Focusing on Cracks with Instance Normalization Wavelet Layer.
- Author
-
Guo, Lei, Xiong, Fengguang, Cao, Yaming, Xue, Hongxin, Cui, Lei, and Han, Xie
- Subjects
- *
CONVOLUTIONAL neural networks , *WAVELETS (Mathematics) , *PRIOR learning , *GENERALIZATION - Abstract
Automatic crack detection is challenging, owing to the complex and thin topologies, diversity, and background noises of cracks. Inspired by the wavelet theory, we present an instance normalization wavelet (INW) layer and embed the layer into the deep model for segmentation. The proposed layer employs prior knowledge in the wavelets to capture the crack features and filter the high-frequency noises simultaneously, accelerating the convergence of model training. Furthermore, instance normalization in our layer is utilized to mitigate the feature differences, boosting the generalization capability. In addition, a fusion layer is added to merge the information across the different layers. The comparison experiments and ablation studies demonstrate that the INW layer steadily enhances recognition and convergence performance on the DeepCrack dataset and CRACK500 dataset. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
21. Improved Asphalt Pavement Crack Detection Model Based on Shuffle Attention and Feature Fusion.
- Author
-
Mamat, Tursun, Dolkun, Abdukeram, He, Runchang, Zhang, Yonghui, Nigat, Zulipapar, Du, Hanchen, and Mustafa, Zeybek
- Subjects
- *
DETECTION algorithms , *CRACKING of pavements , *ASPHALT pavements , *SURFACE cracks , *FEATURE extraction - Abstract
Pavement distress is one of the most serious and prevalent diseases in pavement road detection. However, traditional methods for crack detection often suffer from low efficiency and limited accuracy, necessitating improvements in the accuracy of existing crack detection algorithms. Consequently, we propose the shuffle attention for you only look once version eight (SA‐YOLOv8) model, which is based on an enhanced framework. Initially, we establish the required dataset and classify images proportionally based on their states. Subsequently, we conduct comparative testing against the results of the original model, analyzing issues such as the oversight of shallow and small cracks, truncation in the recognition of single‐instance long cracks, and imprecise detection. We devise an improved detection approach based on YOLOv8. This method incorporates a small target detection layer to optimize the receptive field range, aiming to focus on identifying shallow and small cracks. Simultaneously, the Shuffle Attention mechanism and the transplanted spatial pyramid pooling‐fast (SPP‐F) reuse structure are introduced in the feature extraction network to enhance the model's attention to detection targets. This augmentation improves the fusion of features for shallow small targets and overall and partial features of long cracks, thereby alleviating the precision of the model in crack detection. The experimental results demonstrate a stepwise improvement in the model's mean average precision (mAP) with each enhancement to the original network. Initially, adding a small object detection layer increased the mAP by 3.4 percentage points, raising it to 68.2%. Subsequently, incorporating the spatial attention (SA) module resulted in a more substantial improvement, boosting the mAP by 8.7 percentage points to 73.5%. Finally, the addition of the transplanted SPP‐F module further enhanced accuracy, increasing the mAP by 0.7 percentage points from the previous stage, thus achieving a final mAP of 74.2%. Overall, these modifications resulted in a total improvement of 9.4 percentage points in mAP compared to the original model. In conclusion, the proposed SA‐YOLOv8s model effectively supports the automated recognition of asphalt road surface cracks, demonstrating applicability in practical scenarios. The recognition performance is notably favorable, demonstrating robustness in complex environments. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
22. Theoretical and Experimental Investigation of the Use of a Roving Mass with Rotary Inertia for Crack Detection in Beam-Like Structures.
- Author
-
Sun, X., Ilanko, S., Mochida, Y., Tighe, R. C., and Mace, B. R.
- Abstract
Purpose: Natural frequency is a global dynamic parameter that normally contains limited spatial information on a crack in a structure. However, recently a theoretical concept that a roving mass with rotary inertia causes sudden frequency shifts when located near the crack location has been proposed as a method of locating cracks, although experimental verification is still lacking. This study fills this gap in knowledge, by investigating the measurability of the frequency shift as a roving body passes a crack. Methods: Natural frequencies were measured through impact hammer tests and compared with frequencies calculated using the dynamic stiffness method and finite element method. Results: The results show that the natural frequency shift could be clearly measured for a beam featuring a medium sized crack. For smaller cracks, while numerical results show that the current method would still enable the identification of their locations as frequency shifts are in the measurable range, the number of locations at which the measurement needs to be taken can be very large. Conclusions: This study provides insights into the practical feasibility of the roving mass technique for crack detection. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
23. Electro-Mechanical Receptance Concept for Cracked Piezoelectric Timoshenko Beams and Application.
- Author
-
Hai, T. T., Toan, L. K., Huyen, N. N., and Khiem, N. T.
- Abstract
Abstarct: Introduction: The frequency response function of a structure is an important attribute that should be gathered for vibration-based damage detection in structural health monitoring (SHM). However, to collect a sufficient number of frequency response functions for the damage detection problem, a large number of sensors and exciters is required. Using smart materials such as piezoelectric material leads to the electro-mechanical impedance (EMI) technique, a powerful tool for remote and real-time performing the SHM. However, the EMI technique is still limited to a small area of damage monitoring and is efficient only in the very high-frequency range. The present paper is devoted to modifying the EMI technique by using the full-length distributed sensor in combination with point mechanical excitation instead of the impedance transducer employed in the EMI technique. This leads to a novel concept of electro-mechanical receptance (EMR) proposed for crack monitoring overlength of beam structure and conducting SHM in the lowest frequency range. Method: The electro-mechanical receptance defined as elelectric charge generated in the piezoelectric layer under concentrated unit mechanical excitation is conducted by analytical method. So, an explicit expression of the electro-mechanical receptance is derived and used for extracting so-called spectral damage index and spectral assurance criterion that are then employed for numerical analysis of EMR’s sensitivity to crack and establishing diagnostic database. Crack detection problem is solved by the contour method using constructed diagnostic database. Results: A concept of electro-mechanical receptance is proposed and its analytical expression has been derived for cracked Timoshenko beam integrated with a piezoelectric layer. It was demonstrated that the proposed electro-mechanical receptance is much more sensitive to crack than modal parameters in the lowest frequency range and this high sensitivity is maintained only for piezoelectric layer thickness less than 15% beam thickness. A so-called spectral assurance criterion that is extracted from electro-mechanical receptance provides an efficient indicator for crack detection in beam structures by measurements of the electro-mechanical receptance. Numerical results show that small crack of 5% beam thickness could be consistently identified from measured electro-mechanical receptance. Conclusion: The coupled electro-mechanical dynamic behavior of a cracked Timoshenko beam bonded with a piezoelectric layer has been analytically studied. An analytical expression of electric charge produced in the piezoelectric layer under concentrated unit mechanical excitation was derived and called herein electro-mechanical receptance for the integrated beam structure. The proposed electro-mechanical receptance is much more sensitive to crack than modal parameters and more easily measured in the lowest frequency range compared to the electro-mechanical impedance. The so-called spectral assurance criterion extracted from measured electro-mechanical receptance enables consistently detecting small cracks of 5% beam thickness. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
24. 面向航拍路面裂缝检测的AC-YOLO.
- Author
-
白锋, 马庆禄, and 赵敏
- Subjects
DYNAMIC models ,GENERALIZATION ,NECK ,AUTOMATION ,ROADS - Abstract
Copyright of Journal of Computer Engineering & Applications is the property of Beijing Journal of Computer Engineering & Applications Journal Co Ltd. and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2025
- Full Text
- View/download PDF
25. 基于深度学习的基础设施表面裂纹检测方法研究进展.
- Author
-
胡翔坤, 李华, 冯毅雄, 钱松荣, 李键, and 李少波
- Subjects
IMAGE recognition (Computer vision) ,OBJECT recognition (Computer vision) ,INFRASTRUCTURE (Economics) ,COMPUTER vision ,SURFACE cracks ,DEEP learning - Abstract
Copyright of Journal of Computer Engineering & Applications is the property of Beijing Journal of Computer Engineering & Applications Journal Co Ltd. and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2025
- Full Text
- View/download PDF
26. A method of hierarchical feature fusion and adaptive receptive field for concrete pavement crack detection.
- Author
-
Qu, Zhong, Yuan, Bin, and Mu, Guoqing
- Abstract
Automatic crack detection is a key task to ensure the quality of concrete pavement and improve the efficiency of pavement maintenance. To address the problem of failing to adaptively combine multi-scale spatial information and the loss of crack detail information in crack detection, a network model with hierarchical feature fusion and adaptive receptive field has been proposed. Firstly, the improved SKNet serves as the backbone network for extracting multi-scale features. Subsequently, the corresponding attention mechanism is introduced to optimize the side output, enhancing attention to the crack location and channel information. Finally, we propose a method that fuses spatial separable convolution and attention mechanism, and design a spatial attention fusion module to restore more crack details. The side network integrates low-level features and high-level features at multiple levels to assist in obtaining the final prediction map. To verify the validity of the proposed method, we evaluate it on three publicly available crack datasets: DeepCrack, CFD and Crack500, achieving F-score ( F 1 ) values of 87.20%, 63.53% and 62.26%, respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
27. A crack detection network with multi-channel attention and enhanced information interaction.
- Author
-
Qu, Zhong, Zhou, Lihui, Yin, Xuehui, and Lu, Tong
- Abstract
Roads frequently experience cracks. It adversely impact the safe passage of vehicles and pedestrians, and have the potential to alter the road’s structure. To address this issue, we propose a novel crack detection network. The network constructs multi-channel attention and enhanced information interaction mechanisms to capture more granular semantic information. In our network, each convolutional layer is followed by a convolution combining asymmetric convolutions and criss-cross attention to enhance the feature maps post-convolution. This is followed by spatial and channel reconstruction convolutions and shuffle attention to optimize the generated side-output features. By extensively mining features from the deep network and ingeniously integrating bottom-level and top-level features through a new feature fusion module. The network achieves precise crack prediction results. Extensive experiments on the general-purpose crack image datasets Crack500, CFD and DeepCrack demonstrate the model’s effectiveness. In these three datasets, F1-score values of 0.734, 0.635, and 0.881, MIoU values of 0.773, 0.726 and 0.888. [ABSTRACT FROM AUTHOR]
- Published
- 2025
- Full Text
- View/download PDF
28. Enhance the Concrete Crack Classification Based on a Novel Multi-Stage YOLOV10-ViT Framework.
- Author
-
Mayya, Ali Mahmoud and Alkayem, Nizar Faisal
- Subjects
- *
CONCRETE construction , *TRANSFORMER models , *CRACKING of concrete , *DEEP learning , *CONCRETE testing - Abstract
Early identification of concrete cracks and multi-class detection can help to avoid future deformation or collapse in concrete structures. Available traditional detection and methodologies require enormous effort and time. To overcome such difficulties, current vision-based deep learning models can effectively detect and classify various concrete cracks. This study introduces a novel multi-stage deep learning framework for crack detection and type classification. First, the recently developed YOLOV10 model is trained to detect possible defective regions in concrete images. After that, a modified vision transformer (ViT) model is trained to classify concrete images into three main types: normal, simple cracks, and multi-branched cracks. The evaluation process includes feeding concrete test images into the trained YOLOV10 model, identifying the possible defect regions, and finally delivering the detected regions into the trained ViT model, which decides the appropriate crack type of those detected regions. Experiments are conducted using the individual ViT model and the proposed multi-stage framework. To improve the generation ability, multi-source datasets of concrete structures are used. For the classification part, a concrete crack dataset consisting of 12,000 images of three classes is utilized, while for the detection part, a dataset composed of various materials from historical buildings containing 1116 concrete images with their corresponding bounding boxes, is utilized. Results prove that the proposed multi-stage model accurately classifies crack types with 90.67% precision, 90.03% recall, and 90.34% F1-score. The results also show that the proposed model outperforms the individual classification model by 10.9%, 19.99%, and 19.2% for precision, recall, and F1-score, respectively. The proposed multi-stage YOLOV10-ViT model can be integrated into the construction systems which are based on crack materials to obtain early warning of possible future deformation in concrete structures. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
29. A Study on the Feasibility of Natural Frequency-Based Crack Detection.
- Author
-
Sun, Xutao, Ilanko, Sinniah, Mochida, Yusuke, and Tighe, Rachael C.
- Subjects
LINEAR elastic fracture mechanics ,FRACTURE toughness testing ,BRITTLE fractures ,FINITE element method ,CRACK propagation (Fracture mechanics) - Abstract
Owing to the long-standing statement that natural frequency-based crack detection is not sensitive enough to localised damage to identify small cracks, many natural frequency-based crack detection methods are validated by detecting cracks of moderate size. However, a direct comparison between the crack severity causing a measurable natural frequency change and the crack severity reaching the initiation of crack propagation or leading to brittle fracture is constantly ignored. Without this understanding, it is debatable whether the presented crack detection methods are feasible in practical situations. Through natural frequency calculation and linear elastic fracture mechanics, this study is dedicated to filling the above gap in knowledge. To directly utilize the solution of stress intensity factor, common fracture toughness test specimens featuring a single-edge crack are used. These specimens are essentially cracked rectangular plates under uniform uniaxial tension. Considering the stress resultants obtained via the extended finite element method, the natural frequency of the loaded cracked plates is calculated using the Rayleigh–Ritz method incorporating corner functions. In addition, assuming the specimens as structural components under remote uniform tension, the development of critical load versus crack length is derived based on the solution of the stress intensity factor. Thus, critical crack lengths corresponding to a series of safety factors are obtained by equating service load with critical load. After obtaining natural frequencies of the cracked plates with critical crack lengths, the natural frequency drop caused by a critical crack can be computed. Hence, the critical crack length can be compared with the crack length when the frequency drop is measurable. It is found that the brittleness of the employed metals plays a vital role in the feasibility of natural frequency-based crack detection. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
30. MSP U-Net: Crack Segmentation for Low-Resolution Images Based on Multi-Scale Parallel Attention U-Net.
- Author
-
Kim, Joon-Hyeok, Noh, Ju-Hyeon, Jang, Jun-Young, and Yang, Hee-Deok
- Subjects
ROAD maintenance ,INSPECTION & review ,DEEP learning ,IMAGE segmentation ,MULTISCALE modeling - Abstract
As the expected lifespans of structures and road approaches, as well as the importance of road maintenance, increase globally, safety inspections have emerged as a crucial task. Nonetheless, the existing crack detection models focus on multi-scale feature loss and performance degradation in learning various types of cracks. We propose the Multi-Scale Parallel Attention U-Net (MSP U-Net) as a network designed for low-resolution images that considers the irregular characteristics of cracks. MSP U-Net applies a large receptive field flock to an attention U-Net, minimizing feature loss across multiple scales. Using the Crack500 dataset, our network achieved a mean intersection of union (mIoU) of 0.7752, outperforming the existing methods on low-resolution images. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
31. Image enhancement-based detection of concrete cracks under turbid water bodies.
- Author
-
Cui, Benben, Wang, Chen, Li, Yangyang, Li, Heng, Li, Changtai, and Cui, Ben
- Subjects
- *
CONCRETE construction , *CRACKING of concrete , *COMPUTER vision , *SUBMERGED structures ,FRACTAL dimensions - Abstract
Underwater concrete structure crack detection and structural health condition assessment based on image processing is challenging. The complex underwater environment and severe image degradation seriously affect the accuracy of crack detection. To solve these problems, a monocular vision and image-enhanced fractal-based fractal science based on computer vision and image processing techniques are proposed to conduct a non-contact detection study of underwater concrete cracks. This study established a four-level structural health condition to assist in underwater crack measurement and safety assessment. The box-counting method was used as a practical tool to calculate the fractal dimension. Three distances of 0.5, 0.8, and 1.2 m were set to verify the effective distance of the algorithm. The results show that the method proposed in this study can effectively detect cracks in submerged concrete members within 0.6 m and help managers correctly determine the structure's health using the fractal dimension. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
32. Enhanced Video-Level Anomaly Feature Detection for Nuclear Power Plant Component Inspections Using the Latency Mechanism.
- Author
-
Fei, Zhouxiang, Manning, Callum, West, Graeme M., Murray, Paul, and Dobie, Gordon
- Abstract
The conditions of various nuclear power plant facilities are regularly examined through manual inspections. Remote visual inspection is commonly applied and requires engineers to watch lengthy inspection footage and seek anomaly features therein. This is a labor-intensive process as anomaly features of interest usually only appear in very short segments of the original whole video. Therefore, an automated anomaly detection system is preferred to lessen the intensive labor cost in the inspection process. The detection process could also benefit from useful information that could potentially contribute to addressing reasoning traceability. With a well-prepared training data set of the anomaly feature, a convolutional neural network (CNN) can be developed to automatically detect anomaly indications in the inspection video. However, false-positive detections may occur and can be difficult to remove without seeking manual verification. To overcome this problem, we present a new automated video-level anomaly detection framework that utilizes the latency mechanism to effectively lessen false-positive occurrences, and therefore, increase detection accuracy. In this framework, a CNN-based anomaly classifier first performs initial scanning of the anomaly type of interest in every region of the sampled frames. Then our latency mechanism is applied to refine the initial scanning results by flagging up a region as an "anomaly" indication only when "anomaly" is detected by CNN in the current frame and also in a sequence of previous consecutive frames of the same region. We present a case study of crack feature detection in superheater inspection videos to illustrate the performance of the proposed framework. The results show that the latency mechanism can effectively remove the original false-positive detections seen in the initial scanning. In order to provide a primary exploration of suggesting possible formats for addressing reasoning traceability, knowledge graphs of the reasoning process in the video-level detection framework are built to provide a better understanding of why a specific section of the video is flagged as anomaly contents by the video-level detection framework. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
33. A new global multiplexing structure of original features for road crack detection.
- Author
-
Peng, Yuanyuan, Liu, Jie, and Li, Chaofeng
- Subjects
- *
IMAGE recognition (Computer vision) , *DEEP learning , *IMAGE segmentation , *MULTIPLEXING , *SPINE - Abstract
This paper proposes a novel approach, referred to as Global Multiplexing of Original Features (GMOF), to detect cracks in images. The proposed approach leverages the shallow layers of a network to extract crack-edge details, which are then fused with deep features in later stages to improve detection accuracy. Specifically, GMOF utilises the first stage of a backbone network to extract shallow edge information, which is then resized to match the resolution of the subsequent stages. The original feature is then concatenated with the deep feature map, followed by a one-dimensional convolution to ensure channel consistency between stages. The experimental results on image classification and segmentation tasks show that GMOF helps the network learn fine edge details of cracks, resulting in a maximum improvement of 6.06% (classification) and 15.83% (segmentation) in accuracy. This crack detection method is easy to integrate into existing deep learning frameworks. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
34. Asphalt pavement crack detection based on infrared thermography and deep learning.
- Author
-
Jiang, Jiahao, Li, Peng, Wang, Junjie, Chen, Hong, and Zhang, Tiantian
- Subjects
- *
GENERATIVE adversarial networks , *ASPHALT pavements , *CRACKING of pavements , *INFRARED imaging , *HEAT radiation & absorption - Abstract
The current intelligent detection of asphalt pavement cracks relies on visible images, which are ineffective in handling temporary shadow and reflection. In contrast, infrared images reflect thermal radiation intensity, making them suitable for crack detection by mitigating environmental interference. The GSkYOLOv5 method is proposed in this study for accurate crack detection in infrared images of asphalt pavement. Firstly, an infrared dataset consisting of 2400 images of asphalt pavement cracks was captured and produced, including three types of cracks – strip cracks, cross cracks and reticular cracks. And the imbalanced samples were balanced using generative adversarial networks. Secondly, GhostNet and Selective Kernel Networks were added to enhance crack information perception, and the SPPF module was replaced to improve feature learning for different scale cracks. Lastly, GSkYOLOv5 was tested with a self-built infrared dataset of asphalt pavement cracks. GSkYOLOv5 improved detection accuracy by 4.7% and recall rate by 1.3% compared to YOLOv5s, outperforming the other tested algorithms. This method can be combined with visible image-based crack detection for comprehensive intelligent detection of asphalt pavement cracks using dual lenses for visible and infrared images. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
35. Optimising Concrete Crack Detection: A Study of Transfer Learning with Application on Nvidia Jetson Nano.
- Author
-
Nguyen, C. Long, Nguyen, Andy, Brown, Jason, Byrne, Terry, Ngo, Binh Thanh, and Luong, Chieu Xuan
- Abstract
The use of Artificial Intelligence (AI) to detect defects such as concrete cracks in civil and transport infrastructure has the potential to make inspections less expensive, quicker, safer and more objective by reducing the need for on-site human labour. One deployment scenario involves using a drone to carry an embedded device and camera, with the device making localised predictions at the edge about the existence of defects using a trained convolutional neural network (CNN) for image classification. In this paper, we trained six CNNs, namely Resnet18, Resnet50, GoogLeNet, MobileNetV2, MobileNetV3-Small and MobileNetV3-Large, using transfer learning technology to classify images of concrete structures as containing a crack or not. To enhance the model's robustness, the original dataset, comprising 3000 images of concrete structures, was augmented using salt and pepper noise, as well as motion blur, separately. The results show that Resnet50 generally provides the highest validation accuracy (96% with the original dataset and a batch size of 16) and the highest validation F1-score (95% with the original dataset and a batch size of 16). The trained model was then deployed on an Nvidia Jetson Nano device for real-time inference, demonstrating its capability to accurately detect cracks in both laboratory and field settings. This study highlights the potential of using transfer learning on Edge AI devices for Structural Health Monitoring, providing a cost-effective and efficient solution for automated crack detection in concrete structures. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
36. Implementation of surface crack detection method for nuclear fuel pellets by weakly supervised learning.
- Author
-
Li, Fengyu, Zhang, Bin, Zhang, Fanghui, Zhao, Qingtao, Lou, Shiyang, Wang, Zhiyong, and Huang, Kaixin
- Abstract
Surface cracks are one of the primary defects in nuclear fuel pellets, posing a significant hazard to nuclear safety production. Deep learning-based methods recently developed for crack detection are typically trained using a supervised learning, with detection performance dependent on pixel-level annotations, which suffer from high labeling costs and low efficiency. To address this issue, we propose a Weakly Supervised Crack Detection (WSCD) network for surface crack detection of nuclear fuel pellets. The method adopts bounding-box annotations instead of pixel-level annotations, and rapidly generates pixel-level pseudo-labels using the designed Local Fusion Segmentation (LFS) module. Leveraging the Mask-RCNN network as the backbone, the network introduces spatial attention mechanisms to optimize feature extraction networks, enhancing the extraction capability of multi-scale crack features. Lastly, a novel loss function is optimized to address sample imbalance issues and expedite network convergence. Experimental results on the established crack dataset demonstrate that the proposed method improves labeling efficiency by approximately 20 times, achieving a segmentation accuracy (IoU) of 81.9%, which reaches 92.2% of the segmentation accuracy achieved by supervised learning and outperforms that the IoU (80.3%) of other supervised crack segmentation network for nuclear fuel pellets, and meeting the precision requirements of nuclear fuel pellets production lines. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
37. The lift-off effect analysis of flexible differential pick-up koch fractal eddy current probe.
- Author
-
CHEN Guolong, FAN Le, ZHANG Shuaishuai, HAN Yu, LI Yixin, and ZHANG Yanlong
- Subjects
EDDY current testing ,NONDESTRUCTIVE testing ,FRACTALS ,EDDIES ,SIGNALS & signaling - Abstract
Copyright of Journal of Measurement Science & Instrumentation is the property of Journal of Measurement Science & Instrumentation and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
38. 煤矿采空区地表裂缝双任务检测方法研究.
- Author
-
陈, 锡明, 姚, 鑫, 任, 开瑀, 姚, 闯闯, 周, 振凯, and 杨, 依林
- Subjects
CONVOLUTIONAL neural networks ,DRONE aircraft ,COAL mining ,FEATURE extraction ,SPATIAL resolution - Abstract
Copyright of Journal of Remote Sensing is the property of Editorial Office of Journal of Remote Sensing & Science Publishing Co. and its content may not be copied or emailed to multiple sites or posted to a listserv without the copyright holder's express written permission. However, users may print, download, or email articles for individual use. This abstract may be abridged. No warranty is given about the accuracy of the copy. Users should refer to the original published version of the material for the full abstract. (Copyright applies to all Abstracts.)
- Published
- 2024
- Full Text
- View/download PDF
39. CRACK DETECTION AND MEASUREMENT IN CONCRETE USING CONVOLUTION NEURAL NETWORK AND DBSCAN SEGMENTATION.
- Author
-
Apisak Jutasiriwong and Wanchai Yodsudjai
- Subjects
CONVOLUTIONAL neural networks ,STRUCTURAL health monitoring ,CONCRETE masonry ,REINFORCED concrete ,MASONRY - Abstract
Crack detection and measurement are essential for assessing the structural integrity of reinforced concrete (RC) structures, but challenges such as surface variability and class imbalance complicate accurate detection. This study introduces an approach integrating Convolutional Neural Networks (ConvNets), adaptive sliding windows, and DBSCAN-based semantic segmentation to address these challenges and enhance crack detection and quantification. The method was evaluated on various surface types, including painted masonry and concrete pavement, with a particular focus on overcoming class imbalance. To tackle this issue, the resampling (RS) technique was applied, achieving the best balance between precision and recall, with an F1 score of 0.836 during validation. The adaptive sliding window algorithm, optimized for lower magnification factors, further enhanced crack localization, improving IoU, recall, and precision. In semantic segmentation, the proposed method performed competitively on the DeepCrack dataset, achieving an IoU of 0.671, comparable to state-of-the-art models. Additionally, the measurement algorithm, which captures crack features such as length, width, and orientation, was tested on multiple surfaces. For painted masonry, it achieved a precision of 0.99, recall of 0.845, and IoU of 0.838, while for concrete pavement, it achieved a precision of 0.983, recall of 0.835, and IoU of 0.823. When applied to the DeepCrack dataset ground truth, it yielded a recall of 0.884, precision of 0.971, and IoU of 0.860. The results demonstrate the robustness and adaptability of this framework, offering an effective solution for automated crack detection and measurement across diverse surfaces. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
40. CrackTinyNet: A novel deep learning model specifically designed for superior performance in tiny road surface crack detection.
- Author
-
Li, Haitao, Peng, Tao, Qiao, Ningguo, Guan, Zhiwei, Feng, Xinyun, Guo, Peng, Duan, Tingting, and Gong, Jinfeng
- Subjects
PAVEMENTS ,SURFACE cracks ,MINIATURE objects ,INFRASTRUCTURE (Economics) ,ROAD safety measures ,DEEP learning - Abstract
With the rapid advancement of highway construction, the maintenance of highway infrastructure has become particularly vital. During highway maintenance, the effective detection of tiny road surface cracks helps to extend the lifespan of roads and enhance traffic efficiency and safety. To elevate the performance of existing road detection models, the CrackTinyNet (CrTNet) algorithm is specifically proposed for detecting tiny road surface cracks. This algorithm utilizes the novel BiFormer general visual transformer, designed expressly for tiny objects, and optimizes the loss function to a normalized Wasserstein distance loss function. It replaces traditional downsampling with Space‐to‐Depth Conv to prevent the excessive loss of tiny object information in the network structure. To highlight the model's advantage in detecting tiny road cracks, ablation experiments and comparison trials were conducted with mainstream deep learning models for crack detection. The results of the ablation experiments show that, compared to the baseline, CrTNet improved the Mean Average Precision (MAP) by 0.22. When compared to other network models suitable for road detection, these results exhibited an improvement of over 8.9%. In conclusion, the CrTNet proposed in this study enables a more accurate detection of tiny road cracks, playing a significant role in the advancement of intelligent traffic management. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
41. A multi-scale re-parameterization enhanced bilateral lightweight crack detection model for low-quality environments.
- Author
-
Yuan, Jingling, Wang, Nana, Cai, Siqi, Jiang, Chunpeng, and Li, Xinping
- Subjects
ARTIFICIAL neural networks ,CRACKING of concrete ,ARTIFICIAL intelligence ,FEATURE extraction ,BRANCHING processes - Abstract
The detection of cracks in structural facilities is of significant importance for infrastructure maintenance and public safety. However, recent huge computations of deep neural networks make it difficult to run them on real-time monitoring devices with limited computing and storage capacity. Additionally, in many low-quality environments such as dim, shadows, and blurriness, lightweight models often lack the performance required for accurate detection of cracks. In view of the above, we propose the structural re-parameterization enhanced lightweight segmentation model for low-quality environments crack detection. The model adopts a bilateral structure and uses different multi-scale network construction units for the two branches of model, allowing for better crack feature extraction from different perspective to enhance robustness and performance in low-quality environments. We design specific re-parameterization process for each branch's multi-scale construction unit to reduce the computational complexity of model inference, enabling the model to be better deployed on low resource monitoring devices for more efficient crack detection. A feature soft-selection mechanism is also proposed to better fuse the features of two branches. Experiment results on three concrete crack datasets indicate that our model can achieve good performance with lower complexity. Compared with the lightweight segmentation model BiSeNetV2, this model has nearly 52% and 43% less GFLOPs and MParams on the three datasets and achieves better performance. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
42. Multimodal Fusion Network for Crack Segmentation with Modified U-Net and Transfer Learning–Based MobileNetV2.
- Author
-
Qiu, Shi, Zaheer, Qasim, Ehsan, Haleema, Hassan Shah, Syed Muhammad Ahmed, Ai, Chengbo, Wang, Jin, and Zheng, Allen A.
- Subjects
INFRASTRUCTURE (Economics) ,AWARENESS - Abstract
This study introduces a state-of-the-art methodology for addressing crack segmentation challenges in structure health monitoring, a crucial concern in infrastructure maintenance. The main objective is to enhance real-time crack monitoring through a cutting-edge multimodal fusion approach that intricately combines a modified U-Net with transfer learning-based MobileNetV2. This integration strategically amalgamates spatial awareness and long-range dependency capture, resulting in an advanced model for crack segmentation. Thorough evaluations of a specialized crack detection data set underscore the efficacy of this integrated approach, positioning it as a reliable solution for real-time crack monitoring. Notably, the choice of MobileNetV2, recognized for its efficiency with the least parameters, contributes to the fusion's effectiveness. This study reveals superior performance, particularly when MobileNetV2 is integrated with U-Net, demonstrating enhanced accuracy and Intersection over Union (IOU) scores. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
43. Evaluating YOLO Models for Efficient Crack Detection in Concrete Structures Using Transfer Learning.
- Author
-
Sohaib, Muhammad, Arif, Muzamal, and Kim, Jong-Myon
- Subjects
CONCRETE construction ,STRUCTURAL health monitoring ,CRACKING of concrete ,SCALABILITY ,DETECTORS - Abstract
The You Only Look Once (YOLO) network is considered highly suitable for real-time object detection tasks due to its characteristics, such as high speed, single-shot detection, global context awareness, scalability, and adaptability to real-world conditions. This work introduces a comprehensive analysis of various YOLO models for detecting cracks in concrete structures, aiming to assist in the selection of an optimal model for future detection and segmentation tasks. The YOLO models are initially trained on a dataset containing both images with and without cracks, producing a generalized model capable of extracting abstract features beneficial for crack detection. Subsequently, transfer learning is employed using a dataset that reflects real-world conditions, such as occlusions, varying crack sizes, and rotations, to further refine the model. Crack detection in concrete remains challenging due to the wide variation in crack sizes, aspect ratios, and complex backgrounds. To achieve optimal performance, we test different versions of YOLO, a state-of-the-art single-shot detector, and aim to balance inference speed and mean average precision (mAP). Our results indicate that YOLOv10 demonstrates superior performance, achieving a mean average precision (mAP) of 74.52% with an inference time of 19.5 milliseconds per image, making it the most effective among the models tested. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
44. Optimized AI Methods for Rapid Crack Detection in Microscopy Images.
- Author
-
Lou, Chenxukun, Tinsley, Lawrence, Duarte Martinez, Fabian, Gray, Simon, and Honarvar Shakibaei Asli, Barmak
- Subjects
DEEP learning ,PLANT maintenance ,MACHINE learning ,IMAGE processing ,QUALITY control - Abstract
Detecting structural cracks is critical for quality control and maintenance of industrial materials, ensuring their safety and extending service life. This study enhances the automation and accuracy of crack detection in microscopic images using advanced image processing and deep learning techniques, particularly the YOLOv8 model. A comprehensive review of relevant literature was carried out to compare traditional image-processing methods with modern machine-learning approaches. The YOLOv8 model was optimized by incorporating the Wise Intersection over Union (WIoU) loss function and the bidirectional feature pyramid network (BiFPN) technique, achieving precise detection results with mean average precision (mAP@0.5) of 0.895 and a precision rate of 0.859, demonstrating its superiority in detecting fine cracks even in complex and noisy backgrounds. Experimental findings confirmed the model's high accuracy in identifying cracks, even under challenging conditions. Despite these advancements, detecting very small or overlapping cracks in complex backgrounds remains challenging. Our future work will focus on optimizing and extending the model's generalisation capabilities. The findings of this study provide a solid foundation for automatic and rapid crack detection in industrial applications and indicate potential for broader applications across various fields. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
45. Efficient Detection and Measurements of Bridge Crack Widths Based on Streamlined Convolutional Neural Network
- Author
-
Yingjun Wu, Junfeng Shi, Benlin Xiao, Hui Zhang, Wenxue Ma, Yang Wang, and Bin Liu
- Subjects
convolutional Neural Networks ,crack detection ,crack measurement ,image segmentation ,Engineering (General). Civil engineering (General) ,TA1-2040 - Abstract
The automation of bridge disease detection necessitates the time-consuming, labor-intensive manual detection process and the limitations of traditional image segmentation methods, such as inadequate denoising effects and insufficient continuity in crack segmentation. This paper proposes a rapid detection and information feedback approach based on an enhanced Convolutional Neural Network (CNN) model to tackle these issues in bridge crack width measurement and information processing. To improve efficiency and accuracy in bridge safety monitoring, the training data is constructed by the bridge image library and network crack through the refined preprocessing and image segmentation techniques applied to these images, key features of cracks are identified and extracted to enhance the capability for crack identification. For crack assessment, the maximum internal tangent circle method is employed to accurately measure the width of bridge abutment cracks. The effectiveness of our model was verified through both fixed-point detection and Unmanned Aerial Vehicle (UAV) dynamic detection, ensuring comprehensive and accurate data collection. This dual validation strategy shows that our model substantiates the wide applicability across various scenarios, and the non-contact crack measurement technique achieves a precision of 0.01 mm, demonstrating the effectiveness and accuracy of this streamlined CNN model in accurately assessing crack width.
- Published
- 2025
- Full Text
- View/download PDF
46. CrackTinyNet: A novel deep learning model specifically designed for superior performance in tiny road surface crack detection
- Author
-
Haitao Li, Tao Peng, Ningguo Qiao, Zhiwei Guan, Xinyun Feng, Peng Guo, Tingting Duan, and Jinfeng Gong
- Subjects
crack detection ,object detection ,road safety ,road traffic ,Transportation engineering ,TA1001-1280 ,Electronic computers. Computer science ,QA75.5-76.95 - Abstract
Abstract With the rapid advancement of highway construction, the maintenance of highway infrastructure has become particularly vital. During highway maintenance, the effective detection of tiny road surface cracks helps to extend the lifespan of roads and enhance traffic efficiency and safety. To elevate the performance of existing road detection models, the CrackTinyNet (CrTNet) algorithm is specifically proposed for detecting tiny road surface cracks. This algorithm utilizes the novel BiFormer general visual transformer, designed expressly for tiny objects, and optimizes the loss function to a normalized Wasserstein distance loss function. It replaces traditional downsampling with Space‐to‐Depth Conv to prevent the excessive loss of tiny object information in the network structure. To highlight the model's advantage in detecting tiny road cracks, ablation experiments and comparison trials were conducted with mainstream deep learning models for crack detection. The results of the ablation experiments show that, compared to the baseline, CrTNet improved the Mean Average Precision (MAP) by 0.22. When compared to other network models suitable for road detection, these results exhibited an improvement of over 8.9%. In conclusion, the CrTNet proposed in this study enables a more accurate detection of tiny road cracks, playing a significant role in the advancement of intelligent traffic management.
- Published
- 2024
- Full Text
- View/download PDF
47. Eddy current quantitative evaluation of high-speed railway contact wire cracks based on neural network
- Author
-
Zhou, Xueying, Sun, Wentao, Zhang, Zehui, Zhang, Junbo, Chen, Haibo, and Li, Hongmei
- Published
- 2024
- Full Text
- View/download PDF
48. Parameter Selection for PSO-Based Hybrid Algorithms and Its Effect on Crack Detection in Cantilever Beams
- Author
-
Amin Ghannadiasl and Saeedeh Ghaemifard
- Subjects
crack detection ,cantilever beam ,hybrid algorithm ,parameters selection of algorithms ,particle swarm ,Engineering (General). Civil engineering (General) ,TA1-2040 - Abstract
The importance of the parameters of any optimization algorithm, especially meta-heuristic algorithms that have been created to simplify the solution of optimization problems, is inevitable. The optimal values of these parameters, which generally depend on the specifics of the problem in question, have a significant impact on the performance of the mentioned algorithms and a better search of the solution space. Parameters selection of them will play an important role in performance and efficiency of the algorithms. This article examines the capability of various optimization algorithms and suggests dual hybrid optimization algorithms are named PSO-FA, PSO-GA, PSO-GWO, for solving the problem of computing the depth and location of cracks in cantilever beams. The performance of Particle swarm optimization (PSO), Genetic algorithm (GA), Grey wolf optimization (GWO), Firefly algorithm (FA), and hybrid of them base on PSO optimizer to determine the location and depth of crack for cantilever beam are proposed. These suggested algorithms are optimization algorithms based on intelligent optimization. So, the performance of these algorithms are analyzed when the control parameters vary.
- Published
- 2024
- Full Text
- View/download PDF
49. Eddy current quantitative evaluation of high-speed railway contact wire cracks based on neural network
- Author
-
Xueying Zhou, Wentao Sun, Zehui Zhang, Junbo Zhang, Haibo Chen, and Hongmei Li
- Subjects
High-speed railway catenary ,Crack detection ,Eddy current detection ,Neural network ,Transportation engineering ,TA1001-1280 ,Railroad engineering and operation ,TF1-1620 - Abstract
Purpose – The purpose of this study is to study the quantitative evaluation method of contact wire cracks by analyzing the changing law of eddy current signal characteristics under different cracks of contact wire of high-speed railway so as to provide a new way of thinking and method for the detection of contact wire injuries of high-speed railway. Design/methodology/approach – Based on the principle of eddy current detection and the specification parameters of high-speed railway contact wires in China, a finite element model for eddy current testing of contact wires was established to explore the variation patterns of crack signal characteristics in numerical simulation. A crack detection system based on eddy current detection was built, and eddy current detection voltage data was obtained for cracks of different depths and widths. By analyzing the variation law of eddy current signals, characteristic parameters were obtained and a quantitative evaluation model for crack width and depth was established based on the back propagation (BP) neural network. Findings – Numerical simulation and experimental detection of eddy current signal change rule is basically consistent, based on the law of the selected characteristics of the parameters in the BP neural network crack quantitative evaluation model also has a certain degree of effectiveness and reliability. BP neural network training results show that the classification accuracy for different widths and depths of the classification is 100 and 85.71%, respectively, and can be effectively realized on the high-speed railway contact line cracks of the quantitative evaluation classification. Originality/value – This study establishes a new type of high-speed railway contact wire crack detection and identification method, which provides a new technical means for high-speed railway contact wire injury detection. The study of eddy current characteristic law and quantitative evaluation model for different cracks in contact line has important academic value and practical significance, and it has certain guiding significance for the detection technology of contact line in high-speed railway.
- Published
- 2024
- Full Text
- View/download PDF
50. A highly efficient tunnel lining crack detection model based on Mini-Unet
- Author
-
Baoxian Li, Xu Chu, Fusheng Lin, Fengyuan Wu, Shuo Jin, and Kexin Zhang
- Subjects
Tunnel engineering ,Crack detection ,Deep learning ,Lightweight model ,Sematic segmentation ,Hybrid loss function ,Medicine ,Science - Abstract
Abstract The accurate detection of tunnel lining cracks and prompt identification of their primary causes are critical for maintaining tunnel availability. The advancement of deep learning, particularly in the domain of convolutional neural network (CNN) for image segmentation, has made tunnel lining crack detection more feasible. However, the CNN-based technique for tunnel lining crack detection commonly prioritizes increasing algorithmic complexity to enhance detection accuracy, posing a challenge in balancing the accuracy of detection and the efficiency of the algorithm. Motivated by the superior performance of Unet in image segmentation, this paper proposes a lightweight tunnel lining crack detection model named Mini-Unet, which refined the Unet architecture and utilized depthwise separable convolutions (DSConv) to replace some standard convolution layers. In the optimization of the proposed model parameters, applying a hybrid loss function that integrated dice loss and cross-entropy loss effectively tackled the imbalance between crack and background categories. Several models were set up to contrast with Mini-Unet and the experimental results were analyzed. Mini-Unet achieves a mean intersection over union (MIoU) of 60.76%, a mean precision of 84.18%, and a frame per second (FPS) of 5.635, respectively. Mini-Unet outperforms several mainstream models, enabling rapid detection while maintaining identified accuracy and facilitating the practical application of AI power for real-time tunnel lining crack detection.
- Published
- 2024
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.