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Flow Mismatching: Unsupervised Anomaly Detection via Velocity Discrepancies in Flow Matching Models

Flow Mismatching, a new unsupervised anomaly detection method, avoids reconstruction-based paradigms by treating flow matching as geometric dynamics and identifying anomalies where learned normal flow disagrees with the geometric path toward a test image. The method compares model-predicted velocity from normal generative dynamics with geometric velocity toward the target, aggregating mismatches over time steps and multiple paths to produce pixel-wise heatmaps and image-level scores without test-time optimization. Experiments on MVTec-AD and VisA show superior performance over state-of-the-art reconstruction-based and flow matching-based approaches, with the population mismatch decomposing into a denoising term and a Fisher-divergence term that explains the effectiveness of robust path aggregation.

read1 min publishedMay 25, 2026

arXiv:2605.23070v1 Announce Type: new Abstract: We propose Flow Mismatching, an unsupervised anomaly detection method that deliberately avoids reconstruction-based paradigms. Instead, we treat flow matching as geometric dynamics and leverage a key insight: anomalies occur at places where the learned normal flow disagrees with the geometric path toward a test image. Given a flow matching model trained only on normal images, we probe its learned velocity field along affine paths from Gaussian noise to a target image. Along each path, we compare the model-predicted velocity, which follows normal generative dynamics, with the geometric velocity toward the target, which includes any anomalous content. Anomalies induce strong local disagreement between these velocities. Aggregating the mismatch over different time steps and multiple paths yields pixel-wise heatmaps and image-level scores without test-time optimization, feature memories, or additional calibration. Our analysis shows that the population mismatch decomposes into an irreducible denoising term and a Fisher-divergence term between the test-path and normal-path score functions, which identifies the score-gap component that drives anomaly separation and explains the effectiveness of robust path aggregation. Extensive experiments on MVTec-AD and VisA demonstrate superior performance compared with SOTA reconstruction-based and recent flow matching-based approaches.

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