Incomplete Multimodal Industrial Anomaly Detection via Cross-Modal Distillation
Wenbo Sui, Daniel Lichau, Josselin Lef\`evre, Harold Phelippeau

TL;DR
This paper introduces CMDIAD, a cross-modal distillation framework enabling industrial anomaly detection models to leverage multimodal data during training while effectively handling incomplete modalities during inference, improving defect detection accuracy.
Contribution
The paper proposes a novel cross-modal distillation approach for industrial anomaly detection that allows training with multiple modalities and inference with limited modalities, addressing practical data constraints.
Findings
MTFI pipeline outperforms single-modality models in incomplete data scenarios
Asymmetric modality performance insights inform future dataset construction
Framework demonstrates effective multimodal training with limited inference modalities
Abstract
Recent studies of multimodal industrial anomaly detection (IAD) based on 3D point clouds and RGB images have highlighted the importance of exploiting the redundancy and complementarity among modalities for accurate classification and segmentation. However, achieving multimodal IAD in practical production lines remains a work in progress. It is essential to consider the trade-offs between the costs and benefits associated with the introduction of new modalities while ensuring compatibility with current processes. Existing quality control processes combine rapid in-line inspections, such as optical and infrared imaging with high-resolution but time-consuming near-line characterization techniques, including industrial CT and electron microscopy to manually or semi-automatically locate and analyze defects in the production of Li-ion batteries and composite materials. Given the cost and time…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Fault Detection and Control Systems
