Shape reconstruction of human foot from multi-camera images based on PCA of human shape database

Jiahui Wang, H. Saito, M. Kimura, M. Mochimaru, T. Kanade
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引用次数: 14

Abstract

Recently, researches and developments for measuring and modeling of human body are taking much attention. Our aim is to capture accurate shape of human foot, using 2D images acquired by multiple cameras, which can capture dynamic behavior of the object. In this paper, 3D active shape models is used for accurate reconstruction of surface shape of human foot. We apply principal component analysis (PCA) of human shape database, so that we can represent human's foot shape by approximately 12 principal component shapes. Because of the reduction of dimensions for representing the object shape, we can efficiently recover the object shape from multi-camera images, even though the object shape is partially occluded in some of input views. To demonstrate the proposed method, two kinds of experiments are presented: high accuracy reconstruction of human foot in a virtual reality environment with CG multi-camera images and in real world with eight CCD cameras. In those experiments, the recovered shape error with our method is around 2mm, while the error is around 4mm with volume intersection method.
基于人体形状数据库PCA的多相机图像人体足部形状重建
近年来,人体测量与建模的研究与发展备受关注。我们的目标是利用多台摄像机获取的二维图像来捕捉人体足部的精确形状,这些图像可以捕捉物体的动态行为。本文采用三维主动形状模型对人足表面形状进行精确重建。利用人体形状数据库的主成分分析(PCA),可以用大约12个主成分形状来表示人的足形。由于减少了表示物体形状的维数,即使在某些输入视图中物体形状被部分遮挡,我们也可以有效地从多相机图像中恢复物体形状。为了验证所提出的方法,提出了两种实验:在虚拟现实环境中使用CG多摄像机图像进行人体足部的高精度重建,以及在现实世界中使用8台CCD摄像机进行人体足部的高精度重建。在这些实验中,我们的方法恢复的形状误差在2mm左右,而体积相交法的误差在4mm左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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