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Main Authors: Hui, Ka-Hei, Liu, Chao, Zeng, Xiaohui, Fu, Chi-Wing, Vahdat, Arash
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.12456
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author Hui, Ka-Hei
Liu, Chao
Zeng, Xiaohui
Fu, Chi-Wing
Vahdat, Arash
author_facet Hui, Ka-Hei
Liu, Chao
Zeng, Xiaohui
Fu, Chi-Wing
Vahdat, Arash
contents Learning generative models of 3D point clouds is one of the fundamental problems in 3D generative learning. One of the key properties of point clouds is their permutation invariance, i.e., changing the order of points in a point cloud does not change the shape they represent. In this paper, we analyze the recently proposed equivariant OT flows that learn permutation invariant generative models for point-based molecular data and we show that these models scale poorly on large point clouds. Also, we observe learning (equivariant) OT flows is generally challenging since straightening flow trajectories makes the learned flow model complex at the beginning of the trajectory. To remedy these, we propose not-so-optimal transport flow models that obtain an approximate OT by an offline OT precomputation, enabling an efficient construction of OT pairs for training. During training, we can additionally construct a hybrid coupling by combining our approximate OT and independent coupling to make the target flow models easier to learn. In an extensive empirical study, we show that our proposed model outperforms prior diffusion- and flow-based approaches on a wide range of unconditional generation and shape completion on the ShapeNet benchmark.
format Preprint
id arxiv_https___arxiv_org_abs_2502_12456
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Not-So-Optimal Transport Flows for 3D Point Cloud Generation
Hui, Ka-Hei
Liu, Chao
Zeng, Xiaohui
Fu, Chi-Wing
Vahdat, Arash
Computer Vision and Pattern Recognition
Artificial Intelligence
Learning generative models of 3D point clouds is one of the fundamental problems in 3D generative learning. One of the key properties of point clouds is their permutation invariance, i.e., changing the order of points in a point cloud does not change the shape they represent. In this paper, we analyze the recently proposed equivariant OT flows that learn permutation invariant generative models for point-based molecular data and we show that these models scale poorly on large point clouds. Also, we observe learning (equivariant) OT flows is generally challenging since straightening flow trajectories makes the learned flow model complex at the beginning of the trajectory. To remedy these, we propose not-so-optimal transport flow models that obtain an approximate OT by an offline OT precomputation, enabling an efficient construction of OT pairs for training. During training, we can additionally construct a hybrid coupling by combining our approximate OT and independent coupling to make the target flow models easier to learn. In an extensive empirical study, we show that our proposed model outperforms prior diffusion- and flow-based approaches on a wide range of unconditional generation and shape completion on the ShapeNet benchmark.
title Not-So-Optimal Transport Flows for 3D Point Cloud Generation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2502.12456