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Uninformed Students: Student-Teacher Anomaly Detection with Discriminative Latent Embeddings

About

We introduce a powerful student-teacher framework for the challenging problem of unsupervised anomaly detection and pixel-precise anomaly segmentation in high-resolution images. Student networks are trained to regress the output of a descriptive teacher network that was pretrained on a large dataset of patches from natural images. This circumvents the need for prior data annotation. Anomalies are detected when the outputs of the student networks differ from that of the teacher network. This happens when they fail to generalize outside the manifold of anomaly-free training data. The intrinsic uncertainty in the student networks is used as an additional scoring function that indicates anomalies. We compare our method to a large number of existing deep learning based methods for unsupervised anomaly detection. Our experiments demonstrate improvements over state-of-the-art methods on a number of real-world datasets, including the recently introduced MVTec Anomaly Detection dataset that was specifically designed to benchmark anomaly segmentation algorithms.

Paul Bergmann, Michael Fauser, David Sattlegger, Carsten Steger• 2019

Related benchmarks

TaskDatasetResultRank
Anomaly LocalizationMVTec AD
Pixel AUROC98.2
369
Anomaly DetectionMVTec-AD (test)
I-AUROC92.5
226
Anomaly LocalizationMVTec-AD (test)--
181
Anomaly DetectionCIFAR-10
AUC81.96
120
Anomaly DetectionMNIST
AUC98.6
87
Anomaly DetectionCIFAR-10 32x32x3
AUROC0.8196
87
Anomaly SegmentationMVTec-AD (test)--
85
Anomaly DetectionMVTec AD
Overall AUROC87.7
83
Image-level Anomaly DetectionMVTec-AD (test)
Overall AUROC93.2
68
Anomaly DetectionMVTec AD 1.0 (test)--
57
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