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Shape Modelling Using Markov Random Field Restoration of Point Correspondences

机译:点对应的马尔可夫随机场恢复的形状建模。

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摘要

A method for building statistical point distribution models is proposed. The novelty in this paper is the adaption of Markov random field regularization of the correspondence field over the set of shapes. The new approach leads to a generative model that produces highly homogeneous polygonized shapes and improves the capability of reconstruction of the training data. Furthermore, the method leads to an overall reduction in the total variance of the point distribution model. Thus, it finds correspondence between semi-landmarks that are highly correlated in the shape tangent space. The method is demonstrated on a set of human ear canals extracted from 3D-laser scans.
机译:提出了一种建立统计点分布模型的方法。本文的新颖之处在于将对应字段的马尔可夫随机场正则化在形状集合上的适应性。新方法导致生成模型,该模型生成高度均匀的多边形形状,并提高了训练数据重建的能力。此外,该方法导致了点分布模型的总方差的总体减少。因此,它找到了在形状切线空间中高度相关的半陆标之间的对应关系。该方法在从3D激光扫描中提取的一组人耳道中得到了证明。

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