A Riemannian framework for matching point clouds represented by the Schrödinger distance transform.

Yan Deng, Anand Rangarajan, Stephan Eisenschenk, Baba C Vemuri
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Abstract

In this paper, we cast the problem of point cloud matching as a shape matching problem by transforming each of the given point clouds into a shape representation called the Schrödinger distance transform (SDT) representation. This is achieved by solving a static Schrödinger equation instead of the corresponding static Hamilton-Jacobi equation in this setting. The SDT representation is an analytic expression and following the theoretical physics literature, can be normalized to have unit L2 norm-making it a square-root density, which is identified with a point on a unit Hilbert sphere, whose intrinsic geometry is fully known. The Fisher-Rao metric, a natural metric for the space of densities leads to analytic expressions for the geodesic distance between points on this sphere. In this paper, we use the well known Riemannian framework never before used for point cloud matching, and present a novel matching algorithm. We pose point set matching under rigid and non-rigid transformations in this framework and solve for the transformations using standard nonlinear optimization techniques. Finally, to evaluate the performance of our algorithm-dubbed SDTM-we present several synthetic and real data examples along with extensive comparisons to state-of-the-art techniques. The experiments show that our algorithm outperforms state-of-the-art point set registration algorithms on many quantitative metrics.

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以薛定谔距离变换为代表的点云匹配黎曼框架。
在本文中,我们将点云匹配问题转换为形状匹配问题,将每个给定点云转换为一种称为薛定谔距离变换(SDT)的形状表示。这是通过求解静态薛定谔方程来实现的,而不是在这种情况下求解相应的静态汉密尔顿-贾科比方程。SDT 表示是一个解析表达式,根据理论物理学文献,可以将其归一化为单位 L2 规范,使其成为一个平方根密度,与单位希尔伯特球面上的一个点相一致,而希尔伯特球面的内在几何形状是完全已知的。费舍尔-拉奥度量是密度空间的自然度量,它导致了该球面上各点之间测地距离的解析表达式。在本文中,我们使用了从未用于点云匹配的众所周知的黎曼框架,并提出了一种新颖的匹配算法。在此框架下,我们提出了刚性和非刚性变换下的点集匹配,并使用标准非线性优化技术解决了变换问题。最后,为了评估我们的算法--SDTM--的性能,我们展示了几个合成和真实数据示例,并与最先进的技术进行了广泛比较。实验表明,我们的算法在许多量化指标上都优于最先进的点集配准算法。
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