CVAIJun 28, 2025

Region-Aware CAM: High-Resolution Weakly-Supervised Defect Segmentation via Salient Region Perception

arXiv:2506.22866v12 citationsh-index: 7
Originality Incremental advance
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This work addresses the need for automated defect detection in industrial settings with limited annotated data, offering a practical solution for resource-constrained scenarios.

The paper tackled the problem of high-resolution defect segmentation with weak supervision in industrial quality inspection, proposing a region-aware CAM framework that achieved superior performance on industrial defect datasets.

Surface defect detection plays a critical role in industrial quality inspection. Recent advances in artificial intelligence have significantly enhanced the automation level of detection processes. However, conventional semantic segmentation and object detection models heavily rely on large-scale annotated datasets, which conflicts with the practical requirements of defect detection tasks. This paper proposes a novel weakly supervised semantic segmentation framework comprising two key components: a region-aware class activation map (CAM) and pseudo-label training. To address the limitations of existing CAM methods, especially low-resolution thermal maps, and insufficient detail preservation, we introduce filtering-guided backpropagation (FGBP), which refines target regions by filtering gradient magnitudes to identify areas with higher relevance to defects. Building upon this, we further develop a region-aware weighted module to enhance spatial precision. Finally, pseudo-label segmentation is implemented to refine the model's performance iteratively. Comprehensive experiments on industrial defect datasets demonstrate the superiority of our method. The proposed framework effectively bridges the gap between weakly supervised learning and high-precision defect segmentation, offering a practical solution for resource-constrained industrial scenarios.

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