Research on Pavement Defect Detection Algorithm Based on SEM-YOLOv8n
DOI:
https://doi.org/10.54097/7z3kd850Keywords:
Road defect; deep learning; YOLOv8.Abstract
Automated detection and identification of pavement distresses is essential for timely pavement repair. Subtle pavement defects and multiple defects detection is a challenging task under complex background. With the deepening of the deep learning network, some subtle features tend to disappear and are more difficult to detect under the influence of the complex background. To solve the above problems, this paper proposes the SEM-YOLOv8n pavement defect detection algorithm. Firstly, SPD-Conv is used to replace the traditional convolution, which is conducive to retaining more defect detail information in the image and improving the detection ability of subtle defects; then an efficient multi-scale attention mechanism is added to the fusion network, so that the network suppresses the background information and focuses more on the defect information. Finally, MPDIoU is introduced as a loss function, which optimizes the minimum perpendicular distance between the predicted bounding box and the real bounding box and improves the localization ability, thus improving the accuracy of the network. Finally, the effectiveness of the proposed network is verified on the IRRDD dataset, and the results show that the method achieves 91.9% (Precision), 91.3% (Recall), and 71.3% (mAP) for the classification and detection of road multi-scale minor defects, which meets the demand of real-time road defect detection.
Downloads
References
[1] N. Ahmad, M. Wistuba and H. Lorenzl, GPR as a crack detection tool for asphalt pavements: Possibilities and limitations, 2012 14th International Conference on Ground Penetrating Radar (GPR), Shanghai, China, 2012, pp. 551-555, doi: 10.1109/ICGPR.2012.6254925.
[2] Zhao H, Qin G, Wang X. Improvement of canny algorithm based on pavement edge detection[C]//2010 3rd international congress on image and signal processing. IEEE, 2010, 2: 964-967.
[3] Peng C, Yang M, Zheng Q, et al. A triple-thresholds pavement crack detection method leveraging random structured forest[J]. Construction and Building Materials, 2020, 263: 120080.
[4] Landstrom A, Thurley M J. Morphology-based crack detection for steel slabs[J]. IEEE Journal of selected topics in signal processing, 2012, 6(7): 866-875.
[5] Yang L, Deng J, Duan H, et al. Tunnel water leakage detection method based on ECA and YOLOv5 [J]. JOURNAL OF TIANJIN UNIVERSITY OF TECHNOLOGY AND EDUCATION, 2024,34(02):19-24. DOI:10.19573/j.issn2095-0926.202402003.
[6] Deng J, Lu Y, Lee V C S. Concrete crack detection with handwriting script interferences using faster region‐based convolutional neural network[J]. Computer‐Aided Civil and Infrastructure Engineering, 2020, 35(4): 373-388.
[7] Wang S, Dong Q, Chen X, et al. Measurement of Asphalt Pavement Crack Length Using YOLO V5-BiFPN[J]. Journal of Infrastructure Systems, 2024, 30(2): 04024005.
[8] Zheng X, Qian S, Wei S, et al. The combination of transformer and you only look once for automatic concrete pavement crack detection[J]. Applied Sciences, 2023, 13(16): 9211.
[9] Luo H, Li J, Cai L, et al. STrans-YOLOX: Fusing swin transformer and YOLOX for automatic pavement crack detection[J]. Applied Sciences, 2023, 13(3): 1999.
[10] SUNKARARAJA, LUOTIE. No more strided convolutions or pooling: a new CNN building block for low-resolution images and small objects C. Machine Learning and Knowledge Discovery in Databases: European Conference, ECML PKDD 2022, Grenoble, F-rance,2022:443-459.
[11] Ouyang D, He S, Zhang G, et al. Efficient multi-scale attention module with cross-spatial learning[C]//ICASSP 2023-2023 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP). IEEE, 2023: 1-5.
[12] Chen S, Li Y, Zhang Y, et al. Soft X-ray image recognition and classification of maize seed cracks based on image enhancement and optimized YOLOv8 model[J]. Computers and Electronics in Agriculture, 2024, 216: 108475.
[13] LIU , LU A, CUI H, et al. Lightweight model for detecting lotus leaf diseases and pests using improved YOLOv8[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2024, 40(19): 168-176.
[14] Ma S, Xu Y. Mpdiou: a loss for efficient and accurate bounding box regression[J]. arXiv preprint arXiv:2307.07662, 2023.
Downloads
Published
Issue
Section
License
Copyright (c) 2024 Academic Journal of Science and Technology

This work is licensed under a Creative Commons Attribution 4.0 International License.








