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Masked Spatio-Temporal Structure Prediction for Self-supervised Learning on Point Cloud Videos

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Recently, the community has made tremendous progress in developing effective methods for point cloud video understanding that learn from massive amounts of labeled data. However, annotating point cloud videos is usually notoriously expensive. Moreover, training via one or only a few traditional tasks (e.g., classification) may be insufficient to learn subtle details of the spatio-temporal structure existing in point cloud videos. In this paper, we propose a Masked Spatio-Temporal Structure Prediction (MaST-Pre) method to capture the structure of point cloud videos without human annotations. MaST-Pre is based on spatio-temporal point-tube masking and consists of two self-supervised learning tasks. First, by reconstructing masked point tubes, our method is able to capture the appearance information of point cloud videos. Second, to learn motion, we propose a temporal cardinality difference prediction task that estimates the change in the number of points within a point tube. In this way, MaST-Pre is forced to model the spatial and temporal structure in point cloud videos. Extensive experiments on MSRAction-3D, NTU-RGBD, NvGesture, and SHREC'17 demonstrate the effectiveness of the proposed method.

Zhiqiang Shen, Xiaoxiao Sheng, Hehe Fan, Longguang Wang, Yulan Guo, Qiong Liu, Hao Wen, Xi Zhou• 2023

Related benchmarks

TaskDatasetResultRank
Action RecognitionMSRAction3D
Accuracy94.08
176
Action RecognitionMSR Action3D (test)
Accuracy94.08
94
Action RecognitionNTU RGB+D
Accuracy90.8
50
Hand Gesture RecognitionNVGesture
Accuracy86.7
31
Gesture RecognitionSHREC 17
Accuracy (%)92.4
22
4D Action SegmentationHOI4D
Accuracy74.1
10
4D semantic segmentationHOI4D
mIoU40.3
10
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