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Product Manifold Filter: Non-rigid Shape Correspondence via Kernel Density Estimation in the Product Space

机译:产品歧管过滤器:通过产品空间中的核密度估计实现非刚性形状对应

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Many algorithms for the computation of correspondences between deformable shapes rely on some variant of nearest neighbor matching in a descriptor space. Such are, for example, various point-wise correspondence recovery algorithms used as a post-processing stage in the functional correspondence framework. Such frequently used techniques implicitly make restrictive assumptions (e.g., nearisometry) on the considered shapes and in practice suffer from lack of accuracy and result in poor surjectivity. We propose an alternative recovery technique capable of guaranteeing a bijective correspondence and producing significantly higher accuracy and smoothness. Unlike other methods our approach does not depend on the assumption that the analyzed shapes are isometric. We derive the proposed method from the statistical framework of kernel density estimation and demonstrate its performance on several challenging deformable 3D shape matching datasets.
机译:用于计算可变形形状之间的对应关系的许多算法都依赖于描述符空间中最近邻居匹配的某种变体。例如,这就是用作功能对应框架中的后处理阶段的各种逐点对应恢复算法。这种经常使用的技术隐含地对所考虑的形状进行限制性假设(例如,近等轴测),并且在实践中遭受准确性不足的困扰,并且导致较差的排斥性。我们提出了一种替代的恢复技术,该技术能够保证双射的对应关系并产生明显更高的准确性和平滑度。与其他方法不同,我们的方法不依赖于所分析形状是等距的假设。我们从核密度估计的统计框架中得出了该方法,并证明了其在一些具有挑战性的可变形3D形状匹配数据集上的性能。

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