2024
DOI: 10.1007/s11263-024-02027-5
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Unsupervised Point Cloud Representation Learning by Clustering and Neural Rendering

Guofeng Mei,
Cristiano Saltori,
Elisa Ricci
et al.

Abstract: Data augmentation has contributed to the rapid advancement of unsupervised learning on 3D point clouds. However, we argue that data augmentation is not ideal, as it requires a careful application-dependent selection of the types of augmentations to be performed, thus potentially biasing the information learned by the network during self-training. Moreover, several unsupervised methods only focus on uni-modal information, thus potentially introducing challenges in the case of sparse and textureless point clouds… Show more

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