网格构象在缺失数据形状分析中的应用

X. Ju, Z. Mao, J. Siebert, N. McFarlane, Jiahua Wu, R. Tillett
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引用次数: 8

摘要

一种利用可变形的通用网格的网格构象方法已被应用于建立具有缺失数据的三维形状之间的对应关系。给定一组具有对应关系的形状,利用主成分分析(PCA)建立统计形状模型。该构象首先根据人工定位的相应地标将通用网格全局映射为三维形状,然后对通用网格进行局部变形以克隆三维形状。通过最小化弹性模型的能量来约束局部变形。在构象过程中嵌入了一种算法来填补形状缺失的表面数据。使用合成数据,我们证明了构象保留了一般网格的结构,因此它有助于为形状分析建立良好的对应关系。以形状的主成分分析为例,说明了我们方法的成功和优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying mesh conformation on shape analysis with missing data
A mesh conformation approach that makes use of deformable generic meshes has been applied to establishing correspondences between 3D shapes with missing data. Given a group of shapes with correspondences, we can build up a statistical shape model by applying principal component analysis (PCA). The conformation at first globally maps the generic mesh to the 3D shape based on manually located corresponding landmarks, and then locally deforms the generic mesh to clone the 3D shape. The local deformation is constrained by minimizing the energy of an elastic model. An algorithm was also embedded in the conformation process to fill missing surface data of the shapes. Using synthetic data, we demonstrate that the conformation preserves the configuration of the generic mesh and hence it helps to establish good correspondences for shape analysis. Case studies of the principal component analysis of shapes were presented to illustrate the successes and advantages of our approach.
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