2023
DOI: 10.48550/arxiv.2303.13100
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PointGame: Geometrically and Adaptively Masked Auto-Encoder on Point Clouds

Abstract: Self-supervised learning is attracting large attention in point cloud understanding. However, exploring discriminative and transferable features still remains challenging due to their nature of irregularity and sparsity. We propose a geometrically and adaptively masked auto-encoder for self-supervised learning on point clouds, termed PointGame. PointGame contains two core components: GATE and EAT. GATE stands for the geometrical and adaptive token embedding module; it not only absorbs the conventional wisdom o… Show more

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