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Detection and characterization of Intrinsic symmetry of 3D shapes

机译:3D形状的固有对称性的检测和表征

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A comprehensive framework for detection and characterization of partial intrinsic symmetry over 3D shapes is proposed. To identify prominent symmetric regions which overlap in space and vary in form, the proposed framework is decoupled into a Correspondence Space Voting (CSV) procedure followed by a Transformation Space Mapping (TSM) procedure. In the CSV procedure, significant symmetries are first detected by identifying surface point pairs on the input shape that exhibit local similarity in terms of their intrinsic geometry while simultaneously maintaining an intrinsic distance structure at a global level. To allow detection of potentially overlapping symmetric shape regions, a global intrinsic distance-based voting scheme is employed to ensure the inclusion of only those point pairs that exhibit significant intrinsic symmetry. In the TSM procedure, the Functional Map framework is employed to generate the final map of symmetries between point pairs. The TSM procedure ensures the retrieval of the underlying dense correspondence map throughout the 3D shape that follows a particular symmetry. The TSM procedure is also shown to result in the formulation of a metric symmetry space where each point in the space represents a specific symmetry transformation and the distance between points represents the complexity between the corresponding transformations. Experimental results show that the proposed framework can successfully analyze complex 3D shapes that possess rich symmetries.
机译:提出了一种用于检测和表征3D形状上的部分固有对称性的综合框架。为了识别在空间上重叠且形式不同的突出对称区域,将提出的框架解耦为对应的空间投票(CSV)过程,然后转换空间映射(TSM)过程。在CSV程序中,首先通过识别输入形状上的表面点对来检测重要的对称性,这些表面点对在其固有几何形状方面表现出局部相似性,同时将全局距离结构保持在全局水平。为了允许检测可能重叠的对称形状区域,采用了基于全局内在距离的投票方案,以确保仅包括那些表现出显着内在对称性的点对。在TSM过程中,使用功能图框架来生成点对之间的对称性的最终图。 TSM过程可确保在遵循特定对称性的整个3D形状中检索基本的密集对应图。还显示了TSM程序可以形成度量对称空间,其中空间中的每个点表示特定的对称变换,而点之间的距离表示相应变换之间的复杂度。实验结果表明,提出的框架可以成功地分析具有丰富对称性的复杂3D形状。

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