LERENet: Eliminating Intra-class Differences for Metal Surface Defect Few-shot Semantic Segmentation
Hanze Ding, Zhangkai Wu, Jiyan Zhang, Ming Ping, Yanfang Liu

TL;DR
LERENet is a novel few-shot segmentation model that effectively addresses intra-class differences in metal defect detection by learning local and global features, leading to improved segmentation accuracy.
Contribution
The paper introduces LERENet, which employs local and global feature guidance through MPR and MPE modules to eliminate intra-class differences in metal surface defect segmentation.
Findings
Outperforms existing benchmarks on defect datasets.
Achieves state-of-the-art segmentation accuracy.
Effectively handles intra-class variations.
Abstract
Few-shot segmentation models excel in metal defect detection due to their rapid generalization ability to new classes and pixel-level segmentation, rendering them ideal for addressing data scarcity issues and achieving refined object delineation in industrial applications. Existing works neglect the \textit{Intra-Class Differences}, inherent in metal surface defect data, which hinders the model from learning sufficient knowledge from the support set to guide the query set segmentation. Specifically, it can be categorized into two types: the \textit{Semantic Difference} induced by internal factors in metal samples and the \textit{Distortion Difference} caused by external factors of surroundings. To address these differences, we introduce a \textbf{L}ocal d\textbf{E}scriptor based \textbf{R}easoning and \textbf{E}xcitation \textbf{Net}work (\textbf{LERENet}) to learn the two-view…
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Taxonomy
TopicsAdvanced X-ray and CT Imaging · Welding Techniques and Residual Stresses · Integrated Circuits and Semiconductor Failure Analysis
MethodsSparse Evolutionary Training
