Score: 2

SALAD -- Semantics-Aware Logical Anomaly Detection

Published: September 2, 2025 | arXiv ID: 2509.02101v1

By: Matic Fučka, Vitjan Zavrtanik, Danijel Skočaj

Potential Business Impact:

Finds weird parts in things, even if they look okay.

Business Areas:
Image Recognition Data and Analytics, Software

Recent surface anomaly detection methods excel at identifying structural anomalies, such as dents and scratches, but struggle with logical anomalies, such as irregular or missing object components. The best-performing logical anomaly detection approaches rely on aggregated pretrained features or handcrafted descriptors (most often derived from composition maps), which discard spatial and semantic information, leading to suboptimal performance. We propose SALAD, a semantics-aware discriminative logical anomaly detection method that incorporates a newly proposed composition branch to explicitly model the distribution of object composition maps, consequently learning important semantic relationships. Additionally, we introduce a novel procedure for extracting composition maps that requires no hand-made labels or category-specific information, in contrast to previous methods. By effectively modelling the composition map distribution, SALAD significantly improves upon state-of-the-art methods on the standard benchmark for logical anomaly detection, MVTec LOCO, achieving an impressive image-level AUROC of 96.1%. Code: https://github.com/MaticFuc/SALAD

Country of Origin
🇸🇮 Slovenia

Repos / Data Links

Page Count
18 pages

Category
Computer Science:
CV and Pattern Recognition