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Multimodal Industrial Anomaly Detection by Crossmodal Feature Mapping

About

The paper explores the industrial multimodal Anomaly Detection (AD) task, which exploits point clouds and RGB images to localize anomalies. We introduce a novel light and fast framework that learns to map features from one modality to the other on nominal samples. At test time, anomalies are detected by pinpointing inconsistencies between observed and mapped features. Extensive experiments show that our approach achieves state-of-the-art detection and segmentation performance in both the standard and few-shot settings on the MVTec 3D-AD dataset while achieving faster inference and occupying less memory than previous multimodal AD methods. Moreover, we propose a layer-pruning technique to improve memory and time efficiency with a marginal sacrifice in performance.

Alex Costanzino, Pierluigi Zama Ramirez, Giuseppe Lisanti, Luigi Di Stefano• 2023

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionMVTec 3D-AD 1.0 (test)
Mean Score0.954
134
Anomaly DetectionMVTec 3D-AD
I-AUROC95.4
47
Anomaly DetectionEyecandies
Candy Cane Score0.928
43
Anomaly LocalizationMVTec 3D-AD
AUPRO (Mean)97.1
29
Anomaly DetectionSiM3D real-to-real
Mean I-AUROC42.6
25
Anomaly DetectionMVTec 3D-AD
AUPRO@30% (Bagel)97.9
23
Anomaly DetectionWeld-4M (test)
AUC67
19
Anomaly DetectionMVTec 3D-AD
AUPRO@30%97.1
17
Anomaly DetectionEyecandies
AUCP95.838
12
Anomaly LocalizationSiM3D
V-AUPRO@1% (Pl. Stool)61.1
10
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