Multi-Flow: Multi-View-Enriched Normalizing Flows for Industrial Anomaly Detection
Journal:
arXiv
Published Date:
Apr 4, 2025
Abstract
With more well-performing anomaly detection methods proposed, many of the
single-view tasks have been solved to a relatively good degree. However,
real-world production scenarios often involve complex industrial products,
whose properties may not be fully captured by one single image. While
normalizing flow based approaches already work well in single-camera scenarios,
they currently do not make use of the priors in multi-view data. We aim to
bridge this gap by using these flow-based models as a strong foundation and
propose Multi-Flow, a novel multi-view anomaly detection method. Multi-Flow
makes use of a novel multi-view architecture, whose exact likelihood estimation
is enhanced by fusing information across different views. For this, we propose
a new cross-view message-passing scheme, letting information flow between
neighboring views. We empirically validate it on the real-world multi-view data
set Real-IAD and reach a new state-of-the-art, surpassing current baselines in
both image-wise and sample-wise anomaly detection tasks.