NeuralTPS:从单个稀疏点云学习无先验的符号距离函数

Chao Chen;Yu-Shen Liu;Zhizhong Han
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引用次数: 0

摘要

点云的表面重建是三维计算机视觉的重要课题之一。最新的方法依赖于从大规模监督中学习到的先验的泛化。然而,学习到的先验通常不能很好地泛化到训练过程中看不到的各种几何变化,特别是对于极其稀疏的点云。为了解决这个问题,我们提出了一个神经网络来直接从单个稀疏点云推断sdf,而不使用签名距离监督,学习先验甚至法线。我们在这里的见解是以端到端的方式学习表面参数化和sdf推理。为了弥补稀疏性,我们利用参数化表面作为粗糙表面采样器,在训练迭代中提供许多粗糙表面估计,根据这些估计,我们对基于薄板样条(TPS)的网络进行监督,以统计方式推断光滑的sdf。该方法显著提高了对不可见点云的泛化能力和精度。我们的实验结果表明,我们的方法在合成数据集和真实扫描下的稀疏点云表面重建方面优于最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NeuralTPS: Learning Signed Distance Functions Without Priors From Single Sparse Point Clouds
Surface reconstruction for point clouds is one of the important tasks in 3D computer vision. The latest methods rely on generalizing the priors learned from large scale supervision. However, the learned priors usually do not generalize well to various geometric variations that are unseen during training, especially for extremely sparse point clouds. To resolve this issue, we present a neural network to directly infer SDFs from single sparse point clouds without using signed distance supervision, learned priors or even normals. Our insight here is to learn surface parameterization and SDFs inference in an end-to-end manner. To make up the sparsity, we leverage parameterized surfaces as a coarse surface sampler to provide many coarse surface estimations in training iterations, according to which we mine supervision for our thin plate splines (TPS) based network to infer smooth SDFs in a statistical way. Our method significantly improves the generalization ability and accuracy on unseen point clouds. Our experimental results show our advantages over the state-of-the-art methods in surface reconstruction for sparse point clouds under synthetic datasets and real scans.
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