Aiming at the low detection accuracy of the current algorithm in practical application ofstrip surface defect detection
a method of strip surface defect detectionbased on the improved YOLOv5s method is proposed. Based on YOLOv5s model
firstly
the Swin Transformer structure is fused in the backbone network
and the feature is fused with the neck network to enhance the feature extraction ability of strip steel surface defects. Secondly
the global attention mechanism is integrated into the C3 structure to enlarge the global cross-latitude interactive features and improve the detection efficiency while reducing the dispersion of feature information. Finally
the decoupling head is used to replace the detection head in the model to better solve the contradiction between the classification task and the regression task. The improved method of strip surface defect detection is tested via data set. The results show that the precision of the improved method reaches 85.0%
and the mean average precision reaches 80.8%
which is 9.5% and 5.7% higher than the original YOLOv5s algorithm
further meeting the requirements for the detection accuracy of strip surface defects.
Improved YOLOv5 Algorithm for Defect Detection of Metal Surface
Study on Improved YOLO-V7 Algorithm of Steel Surface Defect Detection
Underwater Image Enhancement Algorithm with Multi-scale Attention Networks
Lightweight Bearing Defect Detection Method Based on Improved YOLOv5s Feature Extraction Network
人机协同装配多目标检测的改进YOLOv7算法
Related Author
邵雨虹
刘海明
王涵
李一飞
杨雯雯
张鹏超
姚小敏
李伟
Related Institution
Modern Engineering Training Center, Chang'an University
School of Mechanical Engineering, Shaanxi University of Technology
Shaanxi Key Laboratory of Industrial Automation
School of Automation, Nanjing University of Information Science & Technology
Jiangsu Collaborative Innovation Center of Atmospheric Environment and Equipment Technology (CICAEET), Nanjing University of Information Science & Technology