Wang Fei, Vemuri Baba C, Rangarajan Anand
Department of Computer and Information Science and Engineering, University of Florida, Gainesville, FL, 32611 USA.
Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit. 2006 Jul 5;1:1283-1288. doi: 10.1109/CVPR.2006.131.
In this paper, we propose a novel and robust algorithm for the groupwise non-rigid registration of multiple unlabeled point-sets with no bias toward any of the given point-sets. To quantify the divergence between multiple probability distributions each estimated from the given point sets, we develop a novel measure based on their cumulative distribution functions that we dub the CDF-JS divergence. The measure parallels the well known Jensen-Shannon divergence (defined for probability density functions) but is more regular than the JS divergence since its definition is based on CDFs as opposed to density functions. As a consequence, CDF-JS is more immune to noise and statistically more robust than the JS.We derive the analytic gradient of the CDF-JS divergence with respect to the non-rigid registration parameters for use in the numerical optimization of the groupwise registration leading a computationally efficient and accurate algorithm. The CDF-JS is symmetric and has no bias toward any of the given point-sets, since there is NO fixed reference data set. Instead, the groupwise registration takes place between the input data sets and an evolving target dubbed the pooled model. This target evolves to a fully registered pooled data set when the CDF-JS defined over this pooled data is minimized. Our algorithm is especially useful for creating atlases of various shapes (represented as point distribution models) as well as for simultaneously registering 3D range data sets without establishing any correspondence. We present experimental results on non-rigid registration of 2D/3D real point set data.
在本文中,我们提出了一种新颖且稳健的算法,用于对多个未标记点集进行成组非刚性配准,且不对任何给定的点集产生偏向。为了量化从给定的点集估计出的多个概率分布之间的差异,我们基于它们的累积分布函数开发了一种新颖的度量,我们将其称为CDF-JS散度。该度量与著名的 Jensen-Shannon 散度(为概率密度函数定义)类似,但比 JS 散度更规则,因为它的定义基于累积分布函数而非密度函数。因此,CDF-JS 比 JS 对噪声更具免疫力且在统计上更稳健。我们推导了CDF-JS散度相对于非刚性配准参数的解析梯度,用于成组配准的数值优化,从而得到一种计算高效且准确的算法。CDF-JS 是对称的,并且不对任何给定的点集产生偏向,因为不存在固定的参考数据集。相反,成组配准在输入数据集与一个称为合并模型的不断演化的目标之间进行。当在此合并数据上定义的CDF-JS最小化时,该目标会演化为一个完全配准的合并数据集。我们的算法对于创建各种形状的图谱(表示为点分布模型)以及同时配准3D距离数据集而无需建立任何对应关系特别有用。我们展示了关于2D/3D真实点集数据非刚性配准的实验结果。