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Strip Surface Defect Detection Algorithm Based on YOLOv5.

Han Wang1, Xiuding Yang1, Bei Zhou1

  • 1School of Mechanical and Electrical Engineering, Guangdong University of Technology, Guangzhou 510006, China.

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|April 13, 2023
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Summary
This summary is machine-generated.

This study introduces CG-Net, a deep learning framework for industrial hot rolled strip steel surface defect detection. CG-Net enhances detection accuracy by 6.3% over YOLOv5s with improved efficiency.

Keywords:
YOLOv5attention mechanismdeep learninghot rolled strip steelsurface defect detection

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Area of Science:

  • Materials Science
  • Computer Science
  • Artificial Intelligence

Background:

  • Surface defect detection in industrial hot rolled strip steel is crucial for quality control.
  • Existing methods may lack accuracy and efficiency.
  • Deep learning offers advanced solutions for complex detection tasks.

Purpose of the Study:

  • To improve the detection accuracy of surface defects in industrial hot rolled strip steel.
  • To develop an efficient and accurate deep learning framework for this task.
  • To introduce a novel multi-scale feature fusion module for enhanced feature extraction.

Main Methods:

  • A novel convolutional neural network (CNN) framework, CG-Net, was developed.
  • A multi-scale feature fusion module (ATPF) was proposed to integrate and weight features adaptively.
  • The model was trained and tested on strip surface defect datasets, including NEU-CLS.

Main Results:

  • CG-Net achieved an average accuracy of 75.9% (mAP50) with 105 frames per second (FPS) and 6.5 GFLOPs.
  • Detection accuracy improved by 6.3% compared to the baseline YOLOv5s.
  • The model demonstrated reduced reference quantity (67%) and computational load (59.5%) versus YOLOv5s.
  • Good generalization performance was observed on the NEU-CLS dataset.

Conclusions:

  • The proposed CG-Net framework effectively improves surface defect detection accuracy for industrial hot rolled strip steel.
  • The ATPF module enhances the extraction of multi-scale semantic information, leading to better performance.
  • CG-Net offers a computationally efficient and accurate solution with strong generalization capabilities.