分段人体扫描的分析

P. Xi, Won-Sook Lee, Chang Shu
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引用次数: 47

摘要

对三维扫描表面数据集的分析由于表面的不完整性以及形状、大小和姿态的差异而出现问题。为了获得一致的参数化,本文将一个高分辨率通用模型与美国和欧洲民用表面人体测量资源(CAESAR)数据库中的数据进行了比对。利用通用模型中的地标信息、CAESAR数据集提供的解剖地标信息和自动生成的几何变形虚拟地标信息,构建粗糙变形径向基函数(RBF)网络。然后,精细映射成功地在表面数据和变形平滑度上应用加权误差和。与以前的方法相比,我们的方法在更高的效率下实现了鲁棒对准。这种一致的参数化也使主成分分析(PCA)在整个身体以及人体部分成为可能。我们对身体分段的分析显示出比整个身体更丰富的变化。这一分析表明,基于片段的人体重建技术在计算机动画中有更广泛的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of segmented human body scans
Analysis on a dataset of 3D scanned surfaces have presented problems because of incompleteness on the surfaces and because of variances in shape, size and pose. In this paper, a high-resolution generic model is aligned to data in the Civilian American and European Surface Anthropometry Resources (CAESAR) database in order to obtain a consistent parameterization. A Radial Basis Function (RBF) network is built for rough deformation by using landmark information from the generic model, anatomical landmarks provided by CAESAR dataset and virtual landmarks created automatically for geometric deformation. Fine mapping then successfully applies a weighted sum of errors on both surface data and the smoothness of deformation. Compared with previous methods, our approach makes robust alignment in a higher efficiency. This consistent parameterization also makes it possible for Principal Components Analysis (PCA) on the whole body as well as human body segments. Our analysis on segmented bodies displays a richer variation than that of the whole body. This analysis indicates that a wider application of human body reconstruction with segments is possible in computer animation.
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