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Global and local isometry-invariant descriptor for 3D shape comparison and partial matching

机译:用于3D形状比较和部分匹配的全局和局部等距不变描述符

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In this paper, based on manifold harmonics, we propose a novel framework for 3D shape similarity comparison and partial matching. First, we propose a novel symmetric mean-value representation to robustly construct high-quality manifold harmonic bases on nonuniform-sampling meshes. Then, based on the manifold harmonic bases constructed, a novel shape descriptor is presented to capture both of global and local features of 3D shape. This feature descriptor is isometry-invariant, i.e., invariant to rigid-body transformations and non-rigid bending. After characterizing 3D models with the shape features, we perform 3D retrieval with a up-to-date discriminative kernel. This kernel is a dimension-free approach to quantifying the similarity between two unordered featuresets, thus especially suitable for our high-dimensional feature data. Experimental results show that our framework can be effectively used for both comprehensive comparison and partial matching among non-rigid 3D shapes.
机译:在本文中,基于流形谐波,我们提出了一种用于3D形状相似性比较和部分匹配的新颖框架。首先,我们提出了一种新颖的对称均值表示,以在非均匀采样网格上稳健地构造高质量流形谐波基。然后,基于构造的流形谐波基础,提出了一种新颖的形状描述符,以捕获3D形状的全局和局部特征。该特征描述符是等距不变的,即对于刚体变换和非刚性弯曲是不变的。在用形状特征表征3D模型后,我们使用最新的区分内核执行3D检索。该内核是一种无量纲的方法,用于量化两个无序特征集之间的相似性,因此特别适合于我们的高维特征数据。实验结果表明,我们的框架可以有效地用于非刚性3D形状之间的全面比较和部分匹配。

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