Authors
Ingemar J Cox, Sunita L Hingorani, Satish B Rao, Bruce M Maggs
Publication date
1996/5/1
Journal
Computer vision and image understanding
Volume
63
Issue
3
Pages
542-567
Publisher
Academic Press
Description
A stereo algorithm is presented that optimizes a maximum likelihood cost function. The maximum likelihood cost function assumes that corresponding features in the left and right images are normally distributed about a common true value and consists of a weighted squared error term if two features are matched or a (fixed) cost if a feature is determined to be occluded. The stereo algorithm finds the set of correspondences that maximize the cost function subject to ordering and uniqueness constraints. The stereo algorithm is independent of the matching primitives. However, for the experiments described in this paper, matching is performed on the individual pixel intensities. Contrary to popular belief, the pixel-based stereo appears to be robust for a variety of images. It also has the advantages of (i) providing adensedisparity map, (ii) requiringnofeature extraction, and (iii)avoidingthe adaptive windowing …
Total citations
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Scholar articles
IJ Cox, SL Hingorani, SB Rao, BM Maggs - Computer vision and image understanding, 1996