
| ID | 69896 |
| フルテキストURL | |
| 著者 |
Hotta, Katsuya
Iwate University
Zhang, Chao
University of Toyama
Hagihara, Yoshihiro
Iwate University
Akashi, Takuya
Okayama University
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| 抄録 | Unsupervised anomaly localization aims to identify anomalous regions that deviate from normal sample patterns. Most recent methods perform feature matching or reconstruction for the target sample with pre-trained deep neural networks. However, they still struggle to address challenging anomalies because the deep embeddings stored in the memory bank can be less powerful and informative. Specifically, prior methods often overly rely on the finite resources stored in the memory bank, which leads to low robustness to unseen targets. In this paper, we propose a novel subspace-guided feature reconstruction framework to pursue adaptive feature approximation for anomaly localization. It first learns to construct low-dimensional subspaces from the given nominal samples, and then learns to reconstruct the given deep target embedding by linearly combining the subspace basis vectors using the self-expressive model. Our core is that, despite the limited resources in the memory bank, the out-of-bank features can be alternatively “mimicked” to adaptively model the target. Moreover, we propose a sampling method that leverages the sparsity of subspaces and allows the feature reconstruction to depend only on a small resource subset, contributing to less memory overhead. Extensive experiments on three benchmark datasets demonstrate that our approach generally achieves state-of-the-art anomaly localization performance.
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| 発行日 | 2025-01
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| 出版物タイトル |
IET Image Processing
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| 巻 | 19巻
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| 号 | 1号
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| 出版者 | Institution of Engineering and Technology (IET)
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| 開始ページ | e70157
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| ISSN | 1751-9659
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| NCID | AA12198126
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| 資料タイプ |
学術雑誌論文
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| 言語 |
英語
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| OAI-PMH Set |
岡山大学
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| 著作権者 | © 2025 The Author(s).
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| 論文のバージョン | publisher
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| DOI | |
| Web of Science KeyUT | |
| 関連URL | isVersionOf https://doi.org/10.1049/ipr2.70157
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| ライセンス | http://creativecommons.org/licenses/by/4.0/
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| Citation | Hotta, K., Zhang, C., Hagihara, Y. and Akashi, T. (2025), Subspace-Guided Feature Reconstruction for Unsupervised Anomaly Localization. IET Image Process., 19: e70157. https://doi.org/10.1049/ipr2.70157
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| 助成情報 |
23K19989:
部分空間表現を用いた特徴空間学習による少量正常サンプルでの多品種異常検知法の確立
( 独立行政法人日本学術振興会 / Japan Society for the Promotion of Science )
24K20828:
ビッグデータにおける汎用特徴表現の獲得に向けた符号化に基づく部分空間学習の確立
( 独立行政法人日本学術振興会 / Japan Society for the Promotion of Science )
|