Self-Supervised Guided Segmentation Framework for Unsupervised Anomaly
Detection
- URL: http://arxiv.org/abs/2209.12440v1
- Date: Mon, 26 Sep 2022 06:14:56 GMT
- Title: Self-Supervised Guided Segmentation Framework for Unsupervised Anomaly
Detection
- Authors: Peng Xing, Yanpeng Sun, Zechao Li
- Abstract summary: Unsupervised anomaly detection is a challenging task in industrial applications.
The distribution gap between forged and real anomaly samples makes it difficult for models trained based on forged samples to effectively locate real anomalies.
The Self-Supervised Guided Framework (SGSF) is proposed to generate forged anomalous samples and the normal sample features as the guidance information of segmentation for anomaly detection.
- Score: 24.26958675342856
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Unsupervised anomaly detection is a challenging task in industrial
applications since it is impracticable to collect sufficient anomalous samples.
In this paper, a novel Self-Supervised Guided Segmentation Framework (SGSF) is
proposed by jointly exploring effective generation method of forged anomalous
samples and the normal sample features as the guidance information of
segmentation for anomaly detection. Specifically, to ensure that the generated
forged anomaly samples are conducive to model training, the Saliency
Augmentation Module (SAM) is proposed. SAM introduces a saliency map to
generate saliency Perlin noise map, and develops an adaptive segmentation
strategy to generate irregular masks in the saliency region. Then, the masks
are utilized to generate forged anomalous samples as negative samples for
training. Unfortunately, the distribution gap between forged and real anomaly
samples makes it difficult for models trained based on forged samples to
effectively locate real anomalies. Towards this end, the Self-supervised
Guidance Network (SGN) is proposed. It leverages the self-supervised module to
extract features that are noise-free and contain normal semantic information as
the prior knowledge of the segmentation module. The segmentation module with
the knowledge of normal patterns segments out the abnormal regions that are
different from the guidance features. To evaluate the effectiveness of SGSF for
anomaly detection, extensive experiments are conducted on three anomaly
detection datasets. The experimental results show that SGSF achieves
state-of-the-art anomaly detection results.
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