Factoring Image Sequences into Shape and Motion
Abstract
Recovery scene geometry and camera motion from a sequence of images is an important problem in computer vision. If the scene geometry is specified by depth measurements, that is, by specifying distances between the camera and feature points in the scene, noise sensitivity worsens rapidly with increasing depth. The authors show hat this difficulty can be overcome by computing scene geometry directly in terms of shape, that is, by computing the coordinates of feature points in the scene with respect to a world-centered system, without recovering camera-centered depth as an intermediate quantity. More specifically, the authors show that a matrix of image measurements can be factored by singular value decomposition into the product of two matrices that represent shape and motion, respectively. The results in this paper extend to three dimensions the solution the authors described in a previous paper for planar camera motion (ICCV, Osaka, Japan, 1990).
BibTeX
@workshop{Tomasi-1991-13301,author = {C. Tomasi and Takeo Kanade},
title = {Factoring Image Sequences into Shape and Motion},
booktitle = {Proceedings of IEEE Workshop on Visual Motion},
year = {1991},
month = {October},
pages = {21 - 28},
}