Small Sample Steel Plate Defect Detection Algorithm of Lightweight YOLOv8

被引:5
作者
Dou, Zhi [1 ]
Gao, Haoran [1 ]
Liu, Guoqi [1 ]
Chang, Baofang [1 ]
机构
[1] College of Computer and Information Engineering, Henan Normal University, Henan, Xinxiang
关键词
attention mechanisms; defect detection; lightweight networking; small samples; YOLOv8;
D O I
10.3778/j.issn.1002-8331.2311-0070
中图分类号
学科分类号
摘要
The surface area of steel plate is large, and the surface defects are very common, and showing the characteristics of multi-class and small amount. Deep learning is difficult to be effectively applied to the detection of such small sample defects. In order to solve this problem, a small sample steel plate defect detection algorithm based on lightweight YOLOv8 is proposed. Firstly, an interactive data augmentation algorithm based on fuzzy search is proposed, which can effectively solve the problem that the network model cannot be effectively trained due to the lack of training samples, making it possible for deep learning to be applied in this field. Then, the LMRNet (lightweight multi-scale residual networks) network is designed to replace the backbone of YOLOv8, to achieve the lightweight of the network model and improve its portability. Finally, the CBFPN (context bidirectional feature pyramid network) and ECSA (efficient channel spatial attention) modules are proposed to make the network more effective in extracting and fusing scar features, and the Wise-IoU loss function is adopted to improve the detection performance. The comparative experimental results show that compared with the original YOLOv8 algorithm, the amount of parameters of the improved network is only 30% of the original network, the amount of calculation is 49% of the original network, the FPS is increased by 9 frame/s. The accuracy rate, recall rate and mAP have increased by 2.9, 6.5 and 5.5 percentage points respectively. Experimental results fully verify the advantages of the proposed algorithm. © 2024 Journal of Computer Engineering and Applications Beijing Co., Ltd.; Science Press. All rights reserved.
引用
收藏
页码:90 / 100
页数:10
相关论文
共 33 条
[21]  
HAN K, WANG Y, TIAN Q, Et al., GhostNet: more features from cheap operations, 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp. 1577-1586, (2019)
[22]  
TAN M, PANG R, LE Q V., Efficientdet: scalable and efficient object detection, Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 10781-10790, (2020)
[23]  
JIN H X, TAO Z, YUN T Y, Et al., Context augmentation and feature refinement network for tiny object detection [C], ICLR 2022 Conference Withdrawn Submission, (2022)
[24]  
WANG Q L, WU B G, ZHU P F, Et al., ECA-Net: efficient channel attention for deep convolutional neural networks, 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR), pp. 11531-11539, (2019)
[25]  
ZHU X, CHENG D, ZHANG Z, Et al., An empirical study of spatial attention mechanisms in deep networks, 2019 IEEE/CVF International Conference on Computer Vision (ICCV), pp. 6687-6696, (2019)
[26]  
LIU W G, LIU D, WANG L., Survey of deformable convolutional networks, Journal of Frontiers of Computer Science and Technology, 17, 7, pp. 1549-1564, (2023)
[27]  
ZHENG Z, WANG P, LIU W, Et al., Distance-IoU loss: faster and better learning for bounding box regression, Proceedings of the AAAI Conference on Artificial Intelligence, (2020)
[28]  
TONG Z, CHEN Y, XU Z, Et al., Wise-IoU: bounding box regression loss with dynamic focusing mechanism, (2023)
[29]  
REDMON J, FARHADI A., YOLOv3: an incremental improvement, (2018)
[30]  
GLENN J, CHAURASIA A, ALEX S, Et al., Ultralytics/yolov5: V7.0- YOLOV5 SOTA realtime instance segmention, (2022)