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Main Authors: Chen, Zining, Luo, Xingshuang, Wang, Weiqiu, Zhao, Zhicheng, Su, Fei, Men, Aidong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.10115
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author Chen, Zining
Luo, Xingshuang
Wang, Weiqiu
Zhao, Zhicheng
Su, Fei
Men, Aidong
author_facet Chen, Zining
Luo, Xingshuang
Wang, Weiqiu
Zhao, Zhicheng
Su, Fei
Men, Aidong
contents Recent Anomaly Detection (AD) methods have achieved great success with In-Distribution (ID) data. However, real-world data often exhibits distribution shift, causing huge performance decay on traditional AD methods. From this perspective, few previous work has explored AD with distribution shift, and the distribution-invariant normality learning has been proposed based on the Reverse Distillation (RD) framework. However, we observe the misalignment issue between the teacher and the student network that causes detection failure, thereby propose FiCo, Filter or Compensate, to address the distribution shift issue in AD. FiCo firstly compensates the distribution-specific information to reduce the misalignment between the teacher and student network via the Distribution-Specific Compensation (DiSCo) module, and secondly filters all abnormal information to capture distribution-invariant normality with the Distribution-Invariant Filter (DiIFi) module. Extensive experiments on three different AD benchmarks demonstrate the effectiveness of FiCo, which outperforms all existing state-of-the-art (SOTA) methods, and even achieves better results on the ID scenario compared with RD-based methods. Our code is available at https://github.com/znchen666/FiCo.
format Preprint
id arxiv_https___arxiv_org_abs_2412_10115
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Filter or Compensate: Towards Invariant Representation from Distribution Shift for Anomaly Detection
Chen, Zining
Luo, Xingshuang
Wang, Weiqiu
Zhao, Zhicheng
Su, Fei
Men, Aidong
Computer Vision and Pattern Recognition
Recent Anomaly Detection (AD) methods have achieved great success with In-Distribution (ID) data. However, real-world data often exhibits distribution shift, causing huge performance decay on traditional AD methods. From this perspective, few previous work has explored AD with distribution shift, and the distribution-invariant normality learning has been proposed based on the Reverse Distillation (RD) framework. However, we observe the misalignment issue between the teacher and the student network that causes detection failure, thereby propose FiCo, Filter or Compensate, to address the distribution shift issue in AD. FiCo firstly compensates the distribution-specific information to reduce the misalignment between the teacher and student network via the Distribution-Specific Compensation (DiSCo) module, and secondly filters all abnormal information to capture distribution-invariant normality with the Distribution-Invariant Filter (DiIFi) module. Extensive experiments on three different AD benchmarks demonstrate the effectiveness of FiCo, which outperforms all existing state-of-the-art (SOTA) methods, and even achieves better results on the ID scenario compared with RD-based methods. Our code is available at https://github.com/znchen666/FiCo.
title Filter or Compensate: Towards Invariant Representation from Distribution Shift for Anomaly Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.10115