DSR -- A dual subspace re-projection network for surface anomaly
detection
- URL: http://arxiv.org/abs/2208.01521v1
- Date: Tue, 2 Aug 2022 15:15:29 GMT
- Title: DSR -- A dual subspace re-projection network for surface anomaly
detection
- Authors: Vitjan Zavrtanik, Matej Kristan, Danijel Sko\v{c}aj
- Abstract summary: We propose an architecture based on quantized feature space representation with dual decoders, DSR, that avoids the image-level anomaly synthesis requirement.
The experiments on the challenging real-world KSDD2 dataset show that DSR significantly outperforms other unsupervised surface anomaly detection methods.
- Score: 9.807317669057175
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: The state-of-the-art in discriminative unsupervised surface anomaly detection
relies on external datasets for synthesizing anomaly-augmented training images.
Such approaches are prone to failure on near-in-distribution anomalies since
these are difficult to be synthesized realistically due to their similarity to
anomaly-free regions. We propose an architecture based on quantized feature
space representation with dual decoders, DSR, that avoids the image-level
anomaly synthesis requirement. Without making any assumptions about the visual
properties of anomalies, DSR generates the anomalies at the feature level by
sampling the learned quantized feature space, which allows a controlled
generation of near-in-distribution anomalies. DSR achieves state-of-the-art
results on the KSDD2 and MVTec anomaly detection datasets. The experiments on
the challenging real-world KSDD2 dataset show that DSR significantly
outperforms other unsupervised surface anomaly detection methods, improving the
previous top-performing methods by 10% AP in anomaly detection and 35% AP in
anomaly localization.
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