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Papers/Towards Scalable 3D Anomaly Detection and Localization: A ...

Towards Scalable 3D Anomaly Detection and Localization: A Benchmark via 3D Anomaly Synthesis and A Self-Supervised Learning Network

Wenqiao Li, Xiaohao Xu, Yao Gu, Bozhong Zheng, Shenghua Gao, Yingna Wu

2023-11-25CVPR 2024 1Anomaly LocalizationRepresentation Learning3D Anomaly DetectionSelf-Supervised LearningAnomaly Detection
PaperPDFCode(official)

Abstract

Recently, 3D anomaly detection, a crucial problem involving fine-grained geometry discrimination, is getting more attention. However, the lack of abundant real 3D anomaly data limits the scalability of current models. To enable scalable anomaly data collection, we propose a 3D anomaly synthesis pipeline to adapt existing large-scale 3Dmodels for 3D anomaly detection. Specifically, we construct a synthetic dataset, i.e., Anomaly-ShapeNet, basedon ShapeNet. Anomaly-ShapeNet consists of 1600 point cloud samples under 40 categories, which provides a rich and varied collection of data, enabling efficient training and enhancing adaptability to industrial scenarios. Meanwhile,to enable scalable representation learning for 3D anomaly localization, we propose a self-supervised method, i.e., Iterative Mask Reconstruction Network (IMRNet). During training, we propose a geometry-aware sample module to preserve potentially anomalous local regions during point cloud down-sampling. Then, we randomly mask out point patches and sent the visible patches to a transformer for reconstruction-based self-supervision. During testing, the point cloud repeatedly goes through the Mask Reconstruction Network, with each iteration's output becoming the next input. By merging and contrasting the final reconstructed point cloud with the initial input, our method successfully locates anomalies. Experiments show that IMRNet outperforms previous state-of-the-art methods, achieving 66.1% in I-AUC on Anomaly-ShapeNet dataset and 72.5% in I-AUC on Real3D-AD dataset. Our dataset will be released at https://github.com/Chopper-233/Anomaly-ShapeNet

Results

TaskDatasetMetricValueModel
Anomaly DetectionAnomaly-ShapeNetO-AUROC0.661IMRNet
Anomaly DetectionAnomaly-ShapeNetP-AUROC0.65IMRNet
Anomaly DetectionReal 3D-ADMean Performance of P. and O. 0.725IMRNet
Anomaly DetectionReal 3D-ADObject AUROC0.725IMRNet
3D Anomaly DetectionAnomaly-ShapeNetO-AUROC0.661IMRNet
3D Anomaly DetectionAnomaly-ShapeNetP-AUROC0.65IMRNet
3D Anomaly DetectionReal 3D-ADMean Performance of P. and O. 0.725IMRNet
3D Anomaly DetectionReal 3D-ADObject AUROC0.725IMRNet

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