CVAISep 1, 2022

A New Knowledge Distillation Network for Incremental Few-Shot Surface Defect Detection

arXiv:2209.00519v111 citationsh-index: 68
AI Analysis

This work addresses incremental few-shot learning for industrial quality inspection, offering a domain-specific solution that is incremental in nature.

The paper tackles the problem of catastrophic forgetting and misclassification in incremental few-shot surface defect detection by proposing a Dual Knowledge Align Network (DKAN), which achieves up to a 6.65% improvement in mean Average Precision over other methods.

Surface defect detection is one of the most essential processes for industrial quality inspection. Deep learning-based surface defect detection methods have shown great potential. However, the well-performed models usually require large training data and can only detect defects that appeared in the training stage. When facing incremental few-shot data, defect detection models inevitably suffer from catastrophic forgetting and misclassification problem. To solve these problems, this paper proposes a new knowledge distillation network, called Dual Knowledge Align Network (DKAN). The proposed DKAN method follows a pretraining-finetuning transfer learning paradigm and a knowledge distillation framework is designed for fine-tuning. Specifically, an Incremental RCNN is proposed to achieve decoupled stable feature representation of different categories. Under this framework, a Feature Knowledge Align (FKA) loss is designed between class-agnostic feature maps to deal with catastrophic forgetting problems, and a Logit Knowledge Align (LKA) loss is deployed between logit distributions to tackle misclassification problems. Experiments have been conducted on the incremental Few-shot NEU-DET dataset and results show that DKAN outperforms other methods on various few-shot scenes, up to 6.65% on the mean Average Precision metric, which proves the effectiveness of the proposed method.

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