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Discrete Point Flow Networks for Efficient Point Cloud Generation

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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
27
Point cloud generationShapeNet chair
1-NNA (CD)62
23
Point cloud generationShapeNet Chair (test)
1-NNA (CD)62.4
16
3D Shape GenerationShapeNet airplane
1-NNA (CD)75.18
16
Point cloud generationShapeNetPart Car (test)
1-NNA (CD)62
13
Point cloud generationShapeNetPart Airplane (test)
1-NNA (CD)75.2
13
Point cloud generationShapeNetPart Chair (test)
1-NNA (Chamfer Distance)62.4
13
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