CVLGMar 3, 2025

Meta Learning-Driven Iterative Refinement for Robust Anomaly Detection in Industrial Inspection

arXiv:2503.01569v18 citationsh-index: 8ECCV Workshops
Originality Incremental advance
AI Analysis

This addresses the problem of handling noisy data in industrial inspection for improved anomaly detection, though it is incremental as it builds on existing meta learning methods.

The study tackled robust anomaly detection in industrial inspection by using meta learning to reject noisy training data, resulting in significant improvements over traditional models on MVTec and KSDD2 datasets.

This study investigates the performance of robust anomaly detection models in industrial inspection, focusing particularly on their ability to handle noisy data. We propose to leverage the adaptation ability of meta learning approaches to identify and reject noisy training data to improve the learning process. In our model, we employ Model Agnostic Meta Learning (MAML) and an iterative refinement process through an Inter-Quartile Range rejection scheme to enhance their adaptability and robustness. This approach significantly improves the models capability to distinguish between normal and defective conditions. Our results of experiments conducted on well known MVTec and KSDD2 datasets demonstrate that the proposed method not only excels in environments with substantial noise but can also contribute in case of a clear training set, isolating those samples that are relatively out of distribution, thus offering significant improvements over traditional models.

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