通过配准和最优对称曲线成对分配寻找镜像对称性:算法和结果

Marcelo Cicconet, David Grant Colburn Hildebrand, H. Elliott
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引用次数: 16

摘要

我们证明了任意欧几里德空间中数据的镜面对称拟合问题可以简化为两个数据集的配准问题,并且解的准确性完全取决于配准精度。这个新的镜面对称配准(MSR)框架涉及(1)相对于任意平面的数据反射,(2)原始和反射数据集的配准,以及(3)计算表示反射和配准映射的变换矩阵的特征值-1的特征向量。为了支持MSR,我们还引入了一种新的基于归一化互相关匹配集合的随机样本一致性的二维配准方法。我们通过在三维形状数据库上使用迭代最近点配准后端进行测试,进一步证明了MSR的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding Mirror Symmetry via Registration and Optimal Symmetric Pairwise Assignment of Curves: Algorithm and Results
We demonstrate that the problem of fitting a plane of mirror symmetry to data in any Euclidian space can be reduced to the problem of registering two datasets, and that the exactness of the solution depends entirely on the registration accuracy. This new Mirror Symmetry via Registration (MSR) framework involves (1) data reflection with respect to an arbitrary plane, (2) registration of original and reflected datasets, and (3) calculation of the eigenvector of eigenvalue -1 for the transformation matrix representing the reflection and registration mappings. To support MSR, we also introduce a novel 2D registration method based on random sample consensus of an ensemble of normalized cross-correlation matches. We further demonstrate the generality of MSR by testing it on a database of 3D shapes with an iterative closest point registration back-end.
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