Cross-Modal Mapping and Dual-Branch Reconstruction for 2D-3D Multimodal Industrial Anomaly Detection
Radia Daci, Vito Ren\`o, Cosimo Patruno, Angelo Cardellicchio, Abdelmalik Taleb-Ahmed, Marco Leo, Cosimo Distante

TL;DR
This paper presents CMDR-IAD, a novel unsupervised framework for multimodal industrial anomaly detection that combines cross-modal mapping and dual-branch reconstruction to improve robustness and accuracy across various modalities and challenging conditions.
Contribution
Introduces a lightweight, modality-flexible unsupervised framework combining cross-modal mapping and dual-branch reconstruction for improved anomaly detection in 2D+3D industrial data.
Findings
Achieves state-of-the-art results on MVTec 3D-AD benchmark.
Demonstrates high accuracy on real-world polyurethane dataset.
Operates effectively without memory banks, even in noisy or low-texture regions.
Abstract
Multimodal industrial anomaly detection benefits from integrating RGB appearance with 3D surface geometry, yet existing \emph{unsupervised} approaches commonly rely on memory banks, teacher-student architectures, or fragile fusion schemes, limiting robustness under noisy depth, weak texture, or missing modalities. This paper introduces \textbf{CMDR-IAD}, a lightweight and modality-flexible unsupervised framework for reliable anomaly detection in 2D+3D multimodal as well as single-modality (2D-only or 3D-only) settings. \textbf{CMDR-IAD} combines bidirectional 2D3D cross-modal mapping to model appearance-geometry consistency with dual-branch reconstruction that independently captures normal texture and geometric structure. A two-part fusion strategy integrates these cues: a reliability-gated mapping anomaly highlights spatially consistent texture-geometry discrepancies,…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Domain Adaptation and Few-Shot Learning · Fault Detection and Control Systems
