Diffusion Probabilistic Models for 3D Point Cloud Generation
Point Cloud Generation Early point cloud generation methods [1, 7] treat point clouds as N × 3 matrices, where N is the fixed number of points, converting the point cloud generation problem to a matrix generation problem, so that existing generative models are readily applicable. For ex-ample, [7] apply variational auto-encoders [13] to point
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