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Discrete Point Flow Networks for Efficient Point Cloud Generation

About

Generative models have proven effective at modeling 3D shapes and their statistical variations. In this paper we investigate their application to point clouds, a 3D shape representation widely used in computer vision for which, however, only few generative models have yet been proposed. We introduce a latent variable model that builds on normalizing flows with affine coupling layers to generate 3D point clouds of an arbitrary size given a latent shape representation. To evaluate its benefits for shape modeling we apply this model for generation, autoencoding, and single-view shape reconstruction tasks. We improve over recent GAN-based models in terms of most metrics that assess generation and autoencoding. Compared to recent work based on continuous flows, our model offers a significant speedup in both training and inference times for similar or better performance. For single-view shape reconstruction we also obtain results on par with state-of-the-art voxel, point cloud, and mesh-based methods.

Roman Klokov, Edmond Boyer, Jakob Verbeek• 2020

Related benchmarks

TaskDatasetResultRank
3D point cloud generationShapeNet Car (test)
1-NNA (CD)62.35
57
3D point cloud generationShapeNet Chair category (test)
MMD (CD)2.536
56
3D point cloud generationShapeNet Airplane category (test)
1-NNA (CD, %)75.18
55
Point cloud generationShapeNet Car
1-NNA (CD)62.35
41
3D Shape GenerationShapeNet airplane
1-NNA (CD)75.18
30
Point Cloud CompletionShapeNet (test)
EMD (Airplane)1.105
26
Point cloud generationShapeNet chair
1-NNA (CD)62
23
3D Shape GenerationShapeNet chair
1-NN Accuracy (CD)62
18
Point cloud generationShapeNet Chair (test)
1-NNA (CD)62.4
16
Point cloud generationShapeNetPart Car (test)
1-NNA (CD)62
13
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