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首页> 外文期刊>Biomedical signal processing and control >Direct point-based registration for precise non-rigid surface matching using Student's-t mixture model
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Direct point-based registration for precise non-rigid surface matching using Student's-t mixture model

机译:基于直接点的配准,使用Student's-t混合模型进行精确的非刚性表面匹配

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摘要

One of the main challenges in the non-rigid surface matching is to match complex surfaces with absence of salient landmarks (marker-less) and salient structures (structure-less). We propose an accurate non-rigid surface registration method, called DSMM, to match complex surfaces based on a dense point-to-point correspondence alignment. The key idea of our approach is to model the correspondences on surfaces by using Student's-t mixture model and represent local spatial structures via Dirichlet distribution and the directional springs. Firstly, we formulate the problem of alignment of two point sets as a probability density estimate, modeling one set as Student's-t mixture model centroids, and the other one as observation data. We subsequently incorporate spatial representations of vertices on the surfaces into the prior probability of the finite Student's-t mixture model by exploiting the Dirichlet distribution and Dirichlet law. We later explicitly add an additional structure regularization to get an approximate isometric and near-conformal transformation. Finally, we obtain closed-form solutions of registration parameters using Expectation Maximization (EM) framework, leading to a computationally efficient registration method. We compare DSMM with other state-of-the-art direct point-based non-rigid surface matching methods based on finite mixture models on artificial shapes with large deformation and real complex shapes from various segmented brain structures. DSMM demonstrates its statistical accuracy and robustness, outperforming the competing. (C) 2016 Elsevier Ltd. All rights reserved.
机译:非刚性表面匹配的主要挑战之一是在没有显着地标(无标记)和显着结构(无结构)的情况下匹配复杂表面。我们提出了一种精确的非刚性表面配准方法,称为DSMM,以基于密集的点对点对应对齐方式匹配复杂的表面。我们方法的关键思想是通过使用Student-t混合模型对表面上的对应关系进行建模,并通过Dirichlet分布和定向弹簧来表示局部空间结构。首先,我们将两个点集的对齐问题公式化为概率密度估计,将一个集建模为Student-t混合模型质心,将另一个集建模为观测数据。随后,我们利用Dirichlet分布和Dirichlet定律将表面上顶点的空间表示形式纳入有限Student-t混合模型的先验概率。稍后,我们明确添加其他结构正则化以获得近似等距和近等形的转换。最后,我们使用期望最大化(EM)框架获得注册参数的闭式解,从而产生了一种计算有效的注册方法。我们将DSMM与其他先进的基于直接点的非刚性表面匹配方法进行了比较,该方法基于有限混合模型对来自各种分段大脑结构的具有大变形和实际复杂形状的人造形状进行了有限混合。 DSMM证明了其统计准确性和鲁棒性,优于竞争对手。 (C)2016 Elsevier Ltd.保留所有权利。

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