Mahalanobis PatchCore: Covariance-Aware and Streaming-Compatible Industrial Anomaly Detection 文章

ArXiv CS.CV2026-05-28NEWSen作者: Niccol\`o Ferrari, Oligert Osmani, Evelina Lamma

摘要

arXiv:2605.27748v1 Announce Type: new Abstract: Industrial visual anomaly detection is usually one-class: normal images are abundant, while defects are rare, heterogeneous, and often unavailable during system design. PatchCore-style retrieval suits this setting because it scores test images from a memory bank of normal patch features, but the standard Euclidean geometry ignores feature correlations and its offline construction materialises the full patch pool before subsampling. We introduce Mahalanobis PatchCore, a covariance-aware, streaming-compatible extension of PatchCore. Its artificial intelligence contribution is a retrieval detector that estimates a regularised covariance model in reduced feature space and whitens embeddings, so Euclidean nearest-neighbour search after transformation implements Mahalanobis retrieval.

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