CVMay 23, 2024

AnomalyDINO: Boosting Patch-based Few-shot Anomaly Detection with DINOv2

arXiv:2405.14529v361 citationsh-index: 5WACV
Originality Incremental advance
AI Analysis

This provides a simpler, training-free solution for industrial anomaly detection, though it is incremental as it builds on existing patch-based paradigms.

The paper tackled few-shot anomaly detection by adapting DINOv2 into a vision-only method called AnomalyDINO, achieving state-of-the-art results such as increasing one-shot AUROC on MVTec-AD from 93.1% to 96.6%.

Recent advances in multimodal foundation models have set new standards in few-shot anomaly detection. This paper explores whether high-quality visual features alone are sufficient to rival existing state-of-the-art vision-language models. We affirm this by adapting DINOv2 for one-shot and few-shot anomaly detection, with a focus on industrial applications. We show that this approach does not only rival existing techniques but can even outmatch them in many settings. Our proposed vision-only approach, AnomalyDINO, follows the well-established patch-level deep nearest neighbor paradigm, and enables both image-level anomaly prediction and pixel-level anomaly segmentation. The approach is methodologically simple and training-free and, thus, does not require any additional data for fine-tuning or meta-learning. The approach is methodologically simple and training-free and, thus, does not require any additional data for fine-tuning or meta-learning. Despite its simplicity, AnomalyDINO achieves state-of-the-art results in one- and few-shot anomaly detection (e.g., pushing the one-shot performance on MVTec-AD from an AUROC of 93.1% to 96.6%). The reduced overhead, coupled with its outstanding few-shot performance, makes AnomalyDINO a strong candidate for fast deployment, e.g., in industrial contexts.

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