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3 months ago

Shape-Guided: Shape-Guided Dual-Memory Learning for 3D Anomaly Detection

{Tyng-Luh Liu Hwann-Tzong Chen Ting-I Hsieh Chieh Liu Yu-Min Chu}

Shape-Guided: Shape-Guided Dual-Memory Learning for 3D Anomaly Detection

Abstract

We present a shape-guided expert-learning framework to tackle the problem of unsupervised 3D anomaly detection. Our method is established on the effectiveness of two specialized expert models and their synergy to localize anomalous regions from color and shape modalities. The first expert utilizes geometric information to probe 3D structural anomalies by modeling the implicit distance fields around local shapes. The second expert considers the 2D RGB features associated with the first expert to identify color appearance irregularities on the local shapes. We use the two experts to build the dual memory banks from the anomaly-free training samples and perform shape-guided inference to pinpoint the defects in the testing samples. Owing to the per-point 3D representation and the effective fusion scheme of complementary modalities, our method efficiently achieves state-of-the-art performance on the MVTec 3D-AD dataset with better recall and lower false positive rates, as preferred in real applications.

Benchmarks

BenchmarkMethodologyMetrics
3d-anomaly-detection-and-segmentation-onShape-Guided (only SDF)
Detection AUROC: 0.916
Segmentation AUPRO: 0.931
Segmentation AUROC: 0.978
rgb-3d-anomaly-detection-and-segmentation-onShape-Guided
Detection AUCROC: 0.947
Segmentation AUCROC: 0.996
Segmentation AUPRO: 0.976

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Shape-Guided: Shape-Guided Dual-Memory Learning for 3D Anomaly Detection | Papers | HyperAI