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Sensing three-dimensional shape is a central problem in the development of robot systems for autonomous navigation and manipulation. Stereo vision is an attractive approach to this problem in several applications; however, stereo algorithms still lack reliabillty and generality, We address these problems by modelling the stereo depth map as a discrete random field, by formulating the matching problem in terms of Bayesian estimation, and by using this fxamework to develop a bootstrap procedure that employs fine camera motion to initialize stereo fusion, First, one camera is translated parallel to the stereo baseline to acquire a narrowbaseline image pair; then, the depth map obtained fxom the narrowbaseline image pair is used to constrain matching in a widebaseline image pair consisting of one image from each camera T: result of our procedure is an estimate of depth and depth u,,ertainty at each pixel in the image. This approach produces accurate depth maps reliably and efficiently, applies to indoor and outdoor domains, and extends naturally to multi-sensor systems.
Matthies et al. (Thu,) studied this question.