Deep Unrolling of Sparsity-Induced RDO for 3D Point Cloud Attribute Coding
Abstract
Given encoded 3D point cloud geometry available at the decoder, we study the problem of lossy attribute compression in a multi-resolution B-spline projection framework. A target continuous 3D attribute function is first projected onto a sequence of nested subspaces , where is a family of functions spanned by a B-spline basis function of order at a chosen scale and its integer shifts. The projected low-pass coefficients are computed by variable-complexity unrolling of a rate-distortion (RD) optimization algorithm into a feed-forward network, where the rate term is the sparsity-promoting -norm. Thus, the projection operation is end-to-end differentiable. For a chosen coarse-to-fine predictor, the coefficients are then adjusted to account for the prediction from a lower-resolution to a higher-resolution, which is also optimized in a data-driven manner.
Cite
@article{arxiv.2509.08685,
title = {Deep Unrolling of Sparsity-Induced RDO for 3D Point Cloud Attribute Coding},
author = {Tam Thuc Do and Philip A. Chou and Gene Cheung},
journal= {arXiv preprint arXiv:2509.08685},
year = {2025}
}