Litcius/Paper detail

PointCMP: Contrastive Mask Prediction for Self-supervised Learning on Point Cloud Videos

Zhiqiang Shen, Xiaoxiao Sheng, Longguang Wang, Yulan Guo, Qiong Liu, Xi Zhou

202318 citationsDOI

Abstract

Self-supervised learning can extract representations of good quality from solely unlabeled data, which is ap-pealing for point cloud videos due to their high labelling cost. In this paper, we propose a contrastive mask prediction (PointCMP) framework for self-supervised learning on point cloud videos. Specifically, our PointCMP employs a two-branch structure to achieve simultaneous learning of both local and global spatiotemporal information. On top of this two-branch structure, a mutual similarity based augmentation module is developed to synthesize hard samples at the feature level. By masking dominant tokens and erasing principal channels, we generate hard samples to facilitate learning representations with better discrimi-nation and generalization performance. Extensive experiments show that our PointCMP achieves the state-of-the-art performance on benchmark datasets and outperforms existing full-supervised counterparts. Transfer learning results demonstrate the superiority of the learned representations across different datasets and tasks.

Topics & Concepts

Computer scienceArtificial intelligenceGeneralizationPoint cloudMasking (illustration)Benchmark (surveying)Similarity (geometry)Feature (linguistics)Supervised learningTransfer of learningFeature learningMachine learningPoint (geometry)Pattern recognition (psychology)Image (mathematics)Artificial neural networkVisual artsMathematical analysisMathematicsArtGeometryGeographyPhilosophyLinguisticsGeodesyHuman Pose and Action RecognitionVideo Surveillance and Tracking Methods3D Shape Modeling and Analysis