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3 months ago

Set Features for Fine-grained Anomaly Detection

Niv Cohen Issar Tzachor Yedid Hoshen

Set Features for Fine-grained Anomaly Detection

Abstract

Fine-grained anomaly detection has recently been dominated by segmentation based approaches. These approaches first classify each element of the sample (e.g., image patch) as normal or anomalous and then classify the entire sample as anomalous if it contains anomalous elements. However, such approaches do not extend to scenarios where the anomalies are expressed by an unusual combination of normal elements. In this paper, we overcome this limitation by proposing set features that model each sample by the distribution its elements. We compute the anomaly score of each sample using a simple density estimation method. Our simple-to-implement approach outperforms the state-of-the-art in image-level logical anomaly detection (+3.4%) and sequence-level time-series anomaly detection (+2.4%).

Code Repositories

NivC/SINBAD
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
anomaly-detection-on-mvtec-loco-adSINBAD
Avg. Detection AUROC: 86.8
Detection AUROC (only logical): 88.9
Detection AUROC (only structural): 84.7
anomaly-detection-on-uea-time-series-datasetsSINBAD
Avg. ROC-AUC: 96.8

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Set Features for Fine-grained Anomaly Detection | Papers | HyperAI