Reference-based Defect Detection Network
Zhaoyang Zeng, Bei Liu, Jianlong Fu, Hongyang Chao

TL;DR
This paper introduces RDDN, a novel defect detection network that uses template and context references to address texture shift and visual confusion, improving detection accuracy in industrial defect scenarios.
Contribution
The paper proposes a reference-based approach with template and context references to enhance defect detection robustness against texture shift and partial visual confusion.
Findings
Effective reduction of texture shift impact.
Improved accuracy in partial defect detection.
Validated on two defect datasets.
Abstract
The defect detection task can be regarded as a realistic scenario of object detection in the computer vision field and it is widely used in the industrial field. Directly applying vanilla object detector to defect detection task can achieve promising results, while there still exists challenging issues that have not been solved. The first issue is the texture shift which means a trained defect detector model will be easily affected by unseen texture, and the second issue is partial visual confusion which indicates that a partial defect box is visually similar with a complete box. To tackle these two problems, we propose a Reference-based Defect Detection Network (RDDN). Specifically, we introduce template reference and context reference to against those two problems, respectively. Template reference can reduce the texture shift from image, feature or region levels, and encourage the…
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