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Simultaneous Nonrigid Registration of Multiple Point Sets and Atlas Construction

机译:多点集和地图集构造的同时非刚性配准

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摘要

Groupwise registration of a set of shapes represented by unlabeled point sets is a challenging problem since, usually, this involves solving for point correspondence in a nonrigid motion setting. In this paper, we propose a novel and robust algorithm that is capable of simultaneously computing the mean shape, represented by a probability density function, from multiple unlabeled point sets (represented by finite-mixture models), and registering them nonrigidly to this emerging mean shape. This algorithm avoids the correspondence problem by minimizing the Jensen-Shannon (JS) divergence between the point sets represented as finite mixtures of Gaussian densities. We motivate the use of the JS divergence by pointing out its close relationship to hypothesis testing. Essentially, minimizing the JS divergence is asymptotically equivalent to maximizing the likelihood ratio formed from a probability density of the pooled point sets and the product of the probability densities of the individual point sets. We derive the analytic gradient of the cost function, namely, the JS-divergence, in order to efficiently achieve the optimal solution. The cost function is fully symmetric, with no bias toward any of the given shapes to be registered and whose mean is being sought. A by-product of the registration process is a probabilistic atlas, which is defined as the convex combination of the probability densities of the input point sets being aligned. Our algorithm can be especially useful for creating atlases of various shapes present in images and for simultaneously (rigidly or nonrigidly) registering 3D range data sets (in vision and graphics applications), without having to establish any correspondence. We present experimental results on nonrigidly registering 2D and 3D real and synthetic data (point sets).
机译:由未标记的点集表示的一组形状的按组配准是一个具有挑战性的问题,因为通常这涉及解决非刚性运动设置中的点对应问题。在本文中,我们提出了一种新颖而强大的算法,该算法能够从多个未标记的点集(由有限混合模型表示)中同时计算由概率密度函数表示的均值形状,并将其非刚性地注册到此新兴均值中形状。该算法通过最小化表示为高斯密度的有限混合的点集之间的Jensen-Shannon(JS)散度来避免对应问题。我们通过指出JS散度与假设检验的密切关系来激发其使用。本质上,最小化JS散度在渐近上等效于最大化由合并点集的概率密度与各个点集的概率密度的乘积形成的似然比。为了有效地获得最优解,我们导出了成本函数的解析梯度,即JS散度。成本函数是完全对称的,对要记录的任何给定形状均无偏见,并且其均值正在寻找中。配准过程的副产品是概率图集,其定义为对齐输入点集的概率密度的凸组合。我们的算法对于创建图像中存在的各种形状的地图集以及同时(刚性或非刚性)注册3D范围数据集(在视觉和图形应用中)而无需建立任何对应关系特别有用。我们介绍了非刚性记录2D和3D实数和合成数据(点集)的实验结果。

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