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PEYOLO a perception efficient network for multiscale surface defects detection.

Xun Li1,2,3, Yuzhen Zhao4, Xiangke Jiao1

  • 1Xi'an Key Laboratory of Advanced Photo-Electronics Materials and Energy Conversion Device, School of Electronic Information, Xijing University, Xi'an, 710123, People's Republic of China.

Scientific Reports
|August 6, 2025
PubMed
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This study introduces PEYOLO, an efficient network for detecting small steel surface defects. PEYOLO improves accuracy and speed in complex production environments for real-time quality control.

Area of Science:

  • Materials Science
  • Computer Vision
  • Artificial Intelligence

Background:

  • Steel defect detection is vital for quality control in manufacturing.
  • Detecting small-scale defects in complex industrial settings presents significant challenges.
  • Existing methods struggle with multi-scale defects and efficiency.

Purpose of the Study:

  • To develop a perception-efficient network for fast and accurate detection of multi-scale steel surface defects.
  • To enhance feature fusion and global feature capture for improved defect identification.
  • To provide a solution suitable for real-time steel defect detection applications.

Main Methods:

  • Introduced Defect Capture Path Aggregation Network for multi-scale feature learning.
  • Designed Perception-Efficient Head (PEHead) to reduce missed detections by mitigating aliasing.
Keywords:
Deep learningIndustrial detectionLightweight networkMulti-scale feature extractionSurface defect detectionYOLOv8

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  • Proposed Receptive Field Extension Module (RFEM) to enhance global feature capture and handle aspect ratio variations.
  • Integrated these modules into the YOLO framework, creating PEYOLO.
  • Main Results:

    • PEYOLO achieved mAP50 improvements of 3.5% (NEU-DET), 9.1% (GC10-DET), and 3.3% (Severstal) over YOLOv8n.
    • The method maintained high inference speed, comparable to real-time requirements.
    • Demonstrated significant performance gains on public steel defect datasets.

    Conclusions:

    • PEYOLO effectively addresses the challenge of detecting small-scale, multi-scale steel surface defects.
    • The proposed network offers a balance of high accuracy and fast inference speeds.
    • PEYOLO is a viable solution for real-time steel defect detection in industrial quality control.