Պահպանված է:
Մատենագիտական մանրամասներ
Հիմնական հեղինակներ: Romanelis, Ioannis, Fotis, Vlassios, Kalogeras, Athanasios, Alexakos, Christos, Moustakas, Konstantinos, Munteanu, Adrian
Ձևաչափ: Preprint
Հրապարակվել է: 2024
Խորագրեր:
Առցանց հասանելիություն:https://arxiv.org/abs/2408.06145
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author Romanelis, Ioannis
Fotis, Vlassios
Kalogeras, Athanasios
Alexakos, Christos
Moustakas, Konstantinos
Munteanu, Adrian
author_facet Romanelis, Ioannis
Fotis, Vlassios
Kalogeras, Athanasios
Alexakos, Christos
Moustakas, Konstantinos
Munteanu, Adrian
contents We propose a novel point cloud U-Net diffusion architecture for 3D generative modeling capable of generating high-quality and diverse 3D shapes while maintaining fast generation times. Our network employs a dual-branch architecture, combining the high-resolution representations of points with the computational efficiency of sparse voxels. Our fastest variant outperforms all non-diffusion generative approaches on unconditional shape generation, the most popular benchmark for evaluating point cloud generative models, while our largest model achieves state-of-the-art results among diffusion methods, with a runtime approximately 70% of the previously state-of-the-art PVD. Beyond unconditional generation, we perform extensive evaluations, including conditional generation on all categories of ShapeNet, demonstrating the scalability of our model to larger datasets, and implicit generation which allows our network to produce high quality point clouds on fewer timesteps, further decreasing the generation time. Finally, we evaluate the architecture's performance in point cloud completion and super-resolution. Our model excels in all tasks, establishing it as a state-of-the-art diffusion U-Net for point cloud generative modeling. The code is publicly available at https://github.com/JohnRomanelis/SPVD.git.
format Preprint
id arxiv_https___arxiv_org_abs_2408_06145
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Efficient and Scalable Point Cloud Generation with Sparse Point-Voxel Diffusion Models
Romanelis, Ioannis
Fotis, Vlassios
Kalogeras, Athanasios
Alexakos, Christos
Moustakas, Konstantinos
Munteanu, Adrian
Computer Vision and Pattern Recognition
We propose a novel point cloud U-Net diffusion architecture for 3D generative modeling capable of generating high-quality and diverse 3D shapes while maintaining fast generation times. Our network employs a dual-branch architecture, combining the high-resolution representations of points with the computational efficiency of sparse voxels. Our fastest variant outperforms all non-diffusion generative approaches on unconditional shape generation, the most popular benchmark for evaluating point cloud generative models, while our largest model achieves state-of-the-art results among diffusion methods, with a runtime approximately 70% of the previously state-of-the-art PVD. Beyond unconditional generation, we perform extensive evaluations, including conditional generation on all categories of ShapeNet, demonstrating the scalability of our model to larger datasets, and implicit generation which allows our network to produce high quality point clouds on fewer timesteps, further decreasing the generation time. Finally, we evaluate the architecture's performance in point cloud completion and super-resolution. Our model excels in all tasks, establishing it as a state-of-the-art diffusion U-Net for point cloud generative modeling. The code is publicly available at https://github.com/JohnRomanelis/SPVD.git.
title Efficient and Scalable Point Cloud Generation with Sparse Point-Voxel Diffusion Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.06145