English

Spectral-GANs for High-Resolution 3D Point-cloud Generation

Computer Vision and Pattern Recognition 2020-07-21 v2

Abstract

Point-clouds are a popular choice for vision and graphics tasks due to their accurate shape description and direct acquisition from range-scanners. This demands the ability to synthesize and reconstruct high-quality point-clouds. Current deep generative models for 3D data generally work on simplified representations (e.g., voxelized objects) and cannot deal with the inherent redundancy and irregularity in point-clouds. A few recent efforts on 3D point-cloud generation offer limited resolution and their complexity grows with the increase in output resolution. In this paper, we develop a principled approach to synthesize 3D point-clouds using a spectral-domain Generative Adversarial Network (GAN). Our spectral representation is highly structured and allows us to disentangle various frequency bands such that the learning task is simplified for a GAN model. As compared to spatial-domain generative approaches, our formulation allows us to generate arbitrary number of points high-resolution point-clouds with minimal computational overhead. Furthermore, we propose a fully differentiable block to transform from {the} spectral to the spatial domain and back, thereby allowing us to integrate knowledge from well-established spatial models. We demonstrate that Spectral-GAN performs well for point-cloud generation task. Additionally, it can learn {a} highly discriminative representation in an unsupervised fashion and can be used to accurately reconstruct 3D objects.

Keywords

Cite

@article{arxiv.1912.01800,
  title  = {Spectral-GANs for High-Resolution 3D Point-cloud Generation},
  author = {Sameera Ramasinghe and Salman Khan and Nick Barnes and Stephen Gould},
  journal= {arXiv preprint arXiv:1912.01800},
  year   = {2020}
}

Comments

1 page: Added affiliations

R2 v1 2026-06-23T12:35:12.037Z