2024
DOI: 10.1609/aaai.v38i2.27910
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Generating and Reweighting Dense Contrastive Patterns for Unsupervised Anomaly Detection

Songmin Dai,
Yifan Wu,
Xiaoqiang Li
et al.

Abstract: Recent unsupervised anomaly detection methods often rely on feature extractors pretrained with auxiliary datasets or on well-crafted anomaly-simulated samples. However, this might limit their adaptability to an increasing set of anomaly detection tasks due to the priors in the selection of auxiliary datasets or the strategy of anomaly simulation. To tackle this challenge, we first introduce a prior-less anomaly generation paradigm and subsequently develop an innovative unsupervised anomaly detection framework … Show more

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