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Papers/PO3AD: Predicting Point Offsets toward Better 3D Point Clo...

PO3AD: Predicting Point Offsets toward Better 3D Point Cloud Anomaly Detection

Jianan Ye, Weiguang Zhao, Xi Yang, Guangliang Cheng, Kaizhu Huang

2024-12-17CVPR 2025 13D Anomaly DetectionAnomaly Detection
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Abstract

Point cloud anomaly detection under the anomaly-free setting poses significant challenges as it requires accurately capturing the features of 3D normal data to identify deviations indicative of anomalies. Current efforts focus on devising reconstruction tasks, such as acquiring normal data representations by restoring normal samples from altered, pseudo-anomalous counterparts. Our findings reveal that distributing attention equally across normal and pseudo-anomalous data tends to dilute the model's focus on anomalous deviations. The challenge is further compounded by the inherently disordered and sparse nature of 3D point cloud data. In response to those predicaments, we introduce an innovative approach that emphasizes learning point offsets, targeting more informative pseudo-abnormal points, thus fostering more effective distillation of normal data representations. We also have crafted an augmentation technique that is steered by normal vectors, facilitating the creation of credible pseudo anomalies that enhance the efficiency of the training process. Our comprehensive experimental evaluation on the Anomaly-ShapeNet and Real3D-AD datasets evidences that our proposed method outperforms existing state-of-the-art approaches, achieving an average enhancement of 9.0% and 1.4% in the AUC-ROC detection metric across these datasets, respectively.

Results

TaskDatasetMetricValueModel
Anomaly DetectionAnomaly-ShapeNetO-AUROC0.839PO3AD
Anomaly DetectionAnomaly-ShapeNetP-AUROC0.898PO3AD
Anomaly DetectionReal 3D-ADMean Performance of P. and O. 0.765PO3AD
Anomaly DetectionReal 3D-ADObject AUROC0.765PO3AD
3D Anomaly DetectionAnomaly-ShapeNetO-AUROC0.839PO3AD
3D Anomaly DetectionAnomaly-ShapeNetP-AUROC0.898PO3AD
3D Anomaly DetectionReal 3D-ADMean Performance of P. and O. 0.765PO3AD
3D Anomaly DetectionReal 3D-ADObject AUROC0.765PO3AD

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