Point Clouds Matching Based on Discrete Optimal Transport

Litao Ma;Wei Bian;Xiaoping Xue
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Abstract

Matching is an important prerequisite for point clouds registration, which is to establish a reliable correspondence between two point clouds. This paper aims to improve recent theoretical and algorithmic results on discrete optimal transport (DOT), since it lacks robustness for the point clouds matching problems with large-scale affine or even nonlinear transformation. We first consider the importance of the used prior probability for accurate matching and give some theoretical analysis. Then, to solve the point clouds matching problems with complex deformation and noise, we propose an improved DOT model, which introduces an orthogonal matrix and a diagonal matrix into the classical DOT model. To enhance its capability of dealing with cases with outliers, we further bring forward a relaxed and regularized DOT model. Meantime, we propose two algorithms to solve the brought forward two models. Finally, extensive experiments on some real datasets are designed in the presence of reflection, large-scale rotation, stretch, noise, and outliers. Some state-of-the-art methods, including CPD, APM, RANSAC, TPS-ICP, TPS-RPM, RPMNet, and classical DOT methods, are to be discussed and compared. For different levels of degradation, the numerical results demonstrate that the proposed methods perform more favorably and robustly than the other methods.
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基于离散最优传输的点云匹配。
匹配是点云注册的重要前提,即在两个点云之间建立可靠的对应关系。由于离散最优传输(DOT)对于大规模仿射变换甚至非线性变换的点云匹配问题缺乏鲁棒性,本文旨在改进离散最优传输(DOT)的最新理论和算法成果。我们首先考虑了所使用的先验概率对精确匹配的重要性,并给出了一些理论分析。然后,为了解决具有复杂形变和噪声的点云匹配问题,我们提出了一种改进的 DOT 模型,在经典 DOT 模型中引入了一个正交矩阵和一个对角矩阵。为了增强其处理异常值的能力,我们进一步提出了一种松弛的正则化 DOT 模型。同时,我们提出了两种算法来求解这两种模型。最后,我们在一些真实数据集上进行了大量实验,这些数据集存在反射、大尺度旋转、拉伸、噪声和异常值。一些最先进的方法,包括 CPD、APM、RANSAC、TPS-ICP、TPS-RPM、RPMNet 和经典 DOT 方法,将被讨论和比较。数值结果表明,对于不同程度的劣化,所提出的方法比其他方法的性能更优越、更稳健。
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