Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

Complementary Pseudo Multimodal Feature for Point Cloud Anomaly Detection

About

Point cloud (PCD) anomaly detection steadily emerges as a promising research area. This study aims to improve PCD anomaly detection performance by combining handcrafted PCD descriptions with powerful pre-trained 2D neural networks. To this end, this study proposes Complementary Pseudo Multimodal Feature (CPMF) that incorporates local geometrical information in 3D modality using handcrafted PCD descriptors and global semantic information in the generated pseudo 2D modality using pre-trained 2D neural networks. For global semantics extraction, CPMF projects the origin PCD into a pseudo 2D modality containing multi-view images. These images are delivered to pre-trained 2D neural networks for informative 2D modality feature extraction. The 3D and 2D modality features are aggregated to obtain the CPMF for PCD anomaly detection. Extensive experiments demonstrate the complementary capacity between 2D and 3D modality features and the effectiveness of CPMF, with 95.15% image-level AU-ROC and 92.93% pixel-level PRO on the MVTec3D benchmark. Code is available on https://github.com/caoyunkang/CPMF.

Yunkang Cao, Xiaohao Xu, Weiming Shen• 2023

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionMVTec 3D-AD 1.0 (test)
Mean Score0.951
134
3D Anomaly DetectionReal3D-AD
Average O-AUROC0.625
56
Object-level Anomaly DetectionReal3D-AD 1.0 (test)
Airplane70.1
53
Object-level Anomaly DetectionAnomaly-ShapeNet (test)
ashtray061.5
49
3D Anomaly DetectionReal3D-AD (test)
Airplane70.1
38
3D Anomaly DetectionAnomaly-ShapeNet 1.0 (test)
Avg Rank6.35
31
Anomaly DetectionAnomaly-ShapeNet
ashtray0 Score0.353
30
Anomaly DetectionAnomaly-ShapeNet v1 (test)
Cap 0 AUROC0.601
26
Object-level 3D Anomaly DetectionReal3D-AD
Airplane70.1
25
3D Anomaly LocalizationReal3D-AD
Airplane61.8
21
Showing 10 of 21 rows

Other info

Follow for update