DocumentCode
949250
Title
Stereo Processing by Semiglobal Matching and Mutual Information
Author
Hirschmüller, Heiko
Author_Institution
Inst. of Robotics & Mechatronics, Wessling
Volume
30
Issue
2
fYear
2008
Firstpage
328
Lastpage
341
Abstract
This paper describes the semiglobal matching (SGM) stereo method. It uses a pixelwise, mutual information (Ml)-based matching cost for compensating radiometric differences of input images. Pixelwise matching is supported by a smoothness constraint that is usually expressed as a global cost function. SGM performs a fast approximation by pathwise optimizations from all directions. The discussion also addresses occlusion detection, subpixel refinement, and multibaseline matching. Additionally, postprocessing steps for removing outliers, recovering from specific problems of structured environments, and the interpolation of gaps are presented. Finally, strategies for processing almost arbitrarily large images and fusion of disparity images using orthographic projection are proposed. A comparison on standard stereo images shows that SGM is among the currently top-ranked algorithms and is best, if subpixel accuracy is considered. The complexity is linear to the number of pixels and disparity range, which results in a runtime of just 1-2 seconds on typical test images. An in depth evaluation of the Ml-based matching cost demonstrates a tolerance against a wide range of radiometric transformations. Finally, examples of reconstructions from huge aerial frame and pushbroom images demonstrate that the presented ideas are working well on practical problems.
Keywords
image matching; image reconstruction; stereo image processing; 3D reconstruction; multibaseline matching; mutual information based matching; occlusion detection; orthographic projection; pathwise optimization; pixelwise matching; radiometric transformation; semiglobal matching; stereo processing; subpixel refinement; global optimization; multi-baseline; mutual information; stereo;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2007.1166
Filename
4359315
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