Visual Anomaly Detection Via Partition Memory Bank Module and Error
Estimation
- URL: http://arxiv.org/abs/2209.12441v1
- Date: Mon, 26 Sep 2022 06:15:47 GMT
- Title: Visual Anomaly Detection Via Partition Memory Bank Module and Error
Estimation
- Authors: Peng Xing, Zechao Li
- Abstract summary: Reconstruction method based on the memory module for visual anomaly detection attempts to narrow the reconstruction error for normal samples while enlarging it for anomalous samples.
This work proposes a new unsupervised visual anomaly detection method to jointly learn effective normal features and eliminate unfavorable reconstruction errors.
To evaluate the effectiveness of the proposed method for anomaly detection and localization, extensive experiments are conducted on three widely-used anomaly detection datasets.
- Score: 28.100204573591505
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Reconstruction method based on the memory module for visual anomaly detection
attempts to narrow the reconstruction error for normal samples while enlarging
it for anomalous samples. Unfortunately, the existing memory module is not
fully applicable to the anomaly detection task, and the reconstruction error of
the anomaly samples remains small. Towards this end, this work proposes a new
unsupervised visual anomaly detection method to jointly learn effective normal
features and eliminate unfavorable reconstruction errors. Specifically, a novel
Partition Memory Bank (PMB) module is proposed to effectively learn and store
detailed features with semantic integrity of normal samples. It develops a new
partition mechanism and a unique query generation method to preserve the
context information and then improves the learning ability of the memory
module. The proposed PMB and the skip connection are alternatively explored to
make the reconstruction of abnormal samples worse. To obtain more precise
anomaly localization results and solve the problem of cumulative reconstruction
error, a novel Histogram Error Estimation module is proposed to adaptively
eliminate the unfavorable errors by the histogram of the difference image. It
improves the anomaly localization performance without increasing the cost. To
evaluate the effectiveness of the proposed method for anomaly detection and
localization, extensive experiments are conducted on three widely-used anomaly
detection datasets. The encouraging performance of the proposed method compared
to the recent approaches based on the memory module demonstrates its
superiority.
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