VarAD: Lightweight High-Resolution Image Anomaly Detection via Visual Autoregressive Modeling
This paper addresses a practical task: High-Resolution Image Anomaly Detection (HRIAD). In comparison to conventional image anomaly detection for low-resolution images, HRIAD imposes a heavier computational burden and necessitates superior global information capture capacity. To tackle HRIAD, this p...
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Zusammenfassung: | This paper addresses a practical task: High-Resolution Image Anomaly
Detection (HRIAD). In comparison to conventional image anomaly detection for
low-resolution images, HRIAD imposes a heavier computational burden and
necessitates superior global information capture capacity. To tackle HRIAD,
this paper translates image anomaly detection into visual token prediction and
proposes VarAD based on visual autoregressive modeling for token prediction.
Specifically, VarAD first extracts multi-hierarchy and multi-directional visual
token sequences, and then employs an advanced model, Mamba, for visual
autoregressive modeling and token prediction. During the prediction process,
VarAD effectively exploits information from all preceding tokens to predict the
target token. Finally, the discrepancies between predicted tokens and original
tokens are utilized to score anomalies. Comprehensive experiments on four
publicly available datasets and a real-world button inspection dataset
demonstrate that the proposed VarAD achieves superior high-resolution image
anomaly detection performance while maintaining lightweight, rendering VarAD a
viable solution for HRIAD. Code is available at
\href{https://github.com/caoyunkang/VarAD}{\url{https://github.com/caoyunkang/VarAD}}. |
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DOI: | 10.48550/arxiv.2412.17263 |