HomographyAD: Deep Anomaly Detection Using Self Homography Learning
- URL: http://arxiv.org/abs/2506.08784v1
- Date: Tue, 10 Jun 2025 13:32:20 GMT
- Title: HomographyAD: Deep Anomaly Detection Using Self Homography Learning
- Authors: Jongyub Seok, Chanjin Kang,
- Abstract summary: HomographyAD is a novel deep anomaly detection methodology based on the ImageNet-pretrained network.<n>We show performance enhancement through extensive experiments.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Anomaly detection (AD) is a task that distinguishes normal and abnormal data, which is important for applying automation technologies of the manufacturing facilities. For MVTec dataset that is a representative AD dataset for industrial environment, many recent works have shown remarkable performances. However, the existing anomaly detection works have a limitation of showing good performance for fully-aligned datasets only, unlike real-world industrial environments. To solve this limitation, we propose HomographyAD, a novel deep anomaly detection methodology based on the ImageNet-pretrained network, which is specially designed for actual industrial dataset. Specifically, we first suggest input foreground alignment using the deep homography estimation method. In addition, we fine-tune the model by self homography learning to learn additional shape information from normal samples. Finally, we conduct anomaly detection based on the measure of how far the feature of test sample is from the distribution of the extracted normal features. By applying our proposed method to various existing AD approaches, we show performance enhancement through extensive experiments.
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