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Autori principali: Hsieh, Yu-Hsuan, Lai, Shang-Hong
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.15628
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author Hsieh, Yu-Hsuan
Lai, Shang-Hong
author_facet Hsieh, Yu-Hsuan
Lai, Shang-Hong
contents To improve logical anomaly detection, some previous works have integrated segmentation techniques with conventional anomaly detection methods. Although these methods are effective, they frequently lead to unsatisfactory segmentation results and require manual annotations. To address these drawbacks, we develop an unsupervised component segmentation technique that leverages foundation models to autonomously generate training labels for a lightweight segmentation network without human labeling. Integrating this new segmentation technique with our proposed Patch Histogram module and the Local-Global Student-Teacher (LGST) module, we achieve a detection AUROC of 95.3% in the MVTec LOCO AD dataset, which surpasses previous SOTA methods. Furthermore, our proposed method provides lower latency and higher throughput than most existing approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2408_15628
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CSAD: Unsupervised Component Segmentation for Logical Anomaly Detection
Hsieh, Yu-Hsuan
Lai, Shang-Hong
Computer Vision and Pattern Recognition
To improve logical anomaly detection, some previous works have integrated segmentation techniques with conventional anomaly detection methods. Although these methods are effective, they frequently lead to unsatisfactory segmentation results and require manual annotations. To address these drawbacks, we develop an unsupervised component segmentation technique that leverages foundation models to autonomously generate training labels for a lightweight segmentation network without human labeling. Integrating this new segmentation technique with our proposed Patch Histogram module and the Local-Global Student-Teacher (LGST) module, we achieve a detection AUROC of 95.3% in the MVTec LOCO AD dataset, which surpasses previous SOTA methods. Furthermore, our proposed method provides lower latency and higher throughput than most existing approaches.
title CSAD: Unsupervised Component Segmentation for Logical Anomaly Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.15628