Multi-Cue Anomaly Detection and Localization under Data Contamination
- URL: http://arxiv.org/abs/2601.22913v2
- Date: Wed, 04 Feb 2026 11:10:48 GMT
- Title: Multi-Cue Anomaly Detection and Localization under Data Contamination
- Authors: Anindya Sundar Das, Monowar Bhuyan,
- Abstract summary: We propose a robust anomaly detection framework that integrates limited anomaly supervision into the adaptive deviation learning paradigm.<n>Our framework achieves strong detection and localization performance, interpretability, and robustness under various levels of data contamination.
- Score: 0.6703429330486276
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Visual anomaly detection in real-world industrial settings faces two major limitations. First, most existing methods are trained on purely normal data or on unlabeled datasets assumed to be predominantly normal, presuming the absence of contamination, an assumption that is rarely satisfied in practice. Second, they assume no access to labeled anomaly samples, limiting the model from learning discriminative characteristics of true anomalies. Therefore, these approaches often struggle to distinguish anomalies from normal instances, resulting in reduced detection and weak localization performance. In real-world applications, where training data are frequently contaminated with anomalies, such methods fail to deliver reliable performance. In this work, we propose a robust anomaly detection framework that integrates limited anomaly supervision into the adaptive deviation learning paradigm. We introduce a composite anomaly score that combines three complementary components: a deviation score capturing statistical irregularity, an entropy-based uncertainty score reflecting predictive inconsistency, and a segmentation-based score highlighting spatial abnormality. This unified scoring mechanism enables accurate detection and supports gradient-based localization, providing intuitive and explainable visual evidence of anomalous regions. Following the few-anomaly paradigm, we incorporate a small set of labeled anomalies during training while simultaneously mitigating the influence of contaminated samples through adaptive instance weighting. Extensive experiments on the MVTec and VisA benchmarks demonstrate that our framework outperforms state-of-the-art baselines and achieves strong detection and localization performance, interpretability, and robustness under various levels of data contamination.
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