Journal of Chongqing University of Technology(Natural Science) ›› 2023, Vol. 37 ›› Issue (7): 169-176.

• Machinery and materials • Previous Articles     Next Articles

Research on improved Debevec-YOLOv5 for surface defect detection methods of high-reflective metals

  

  • Online:2023-08-15 Published:2023-08-15

Abstract: High-reflective parts have extremely strong reflectivity. When machine vision systems are used to detect such parts, the captured images contain high brightness interference factors, making it difficult to accurately detect surface defects on the parts. Therefore, based on high dynamic range imaging technology, this paper proposes a method for surface defect recognition by combining the improved Debevec algorithm with YOLOv5. The camera response curve algorithm and image synthesis algorithm of the Debevec algorithm are improved using particle swarm optimization algorithm, and YOLOv5 is used for defect recognition on the synthesized images. Objective evaluation metrics such as information entropy are calculated for the synthesized images, and the results show that the improved algorithm has a better image synthesis quality for reflective parts than the Debevec algorithm and Mertens algorithm do. The false detection rate and missing detection rate of the improved algorithm combined with YOLOv5 to synthesize images are lower than those of the Debevec algorithm and Mertens algorithm do, indicating practical value.

CLC Number: 

  • TG88