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Semi-orthogonal Embedding for Efficient Unsupervised Anomaly Segmentation

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We present the efficiency of semi-orthogonal embedding for unsupervised anomaly segmentation. The multi-scale features from pre-trained CNNs are recently used for the localized Mahalanobis distances with significant performance. However, the increased feature size is problematic to scale up to the bigger CNNs, since it requires the batch-inverse of multi-dimensional covariance tensor. Here, we generalize an ad-hoc method, random feature selection, into semi-orthogonal embedding for robust approximation, cubically reducing the computational cost for the inverse of multi-dimensional covariance tensor. With the scrutiny of ablation studies, the proposed method achieves a new state-of-the-art with significant margins for the MVTec AD, KolektorSDD, KolektorSDD2, and mSTC datasets. The theoretical and empirical analyses offer insights and verification of our straightforward yet cost-effective approach.

Jin-Hwa Kim, Do-Hyeong Kim, Saehoon Yi, Taehoon Lee• 2021

Related benchmarks

TaskDatasetResultRank
Video Anomaly DetectionShanghaiTech (test)
AUC0.5647
194
Video Anomaly DetectionUCF-Crime (UCFC) (test)
AUC0.52
34
Anomaly SegmentationMVTec AD--
33
Anomaly SegmentationmSTC
AUC0.921
4
Unsupervised anomaly segmentationKolektorSDD (Fold 1)
AUROC0.953
3
Unsupervised anomaly segmentationKolektorSDD (Fold 2)
ROC AUC0.951
3
Unsupervised anomaly segmentationKolektorSDD (Fold 3)
AUROC97.6
3
Unsupervised anomaly segmentationKolektorSDD
ROC AUC96
3
Unsupervised anomaly segmentationKolektorSDD2
ROC AUC0.981
3
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