| Literature DB >> 25309710 |
Jie Li1, Wenxuan Shi1, Dexiang Deng1, Wenyan Jia2, Mingui Sun3.
Abstract
A new global stereo matching method is presented that focuses on the handling of disparity, discontinuity and occlusion. The Bayesian approach is utilized for dense stereo matching problem formulated as a maximum a posteriori Markov Random Field (MAP-MRF) problem. In order to improve stereo matching performance, edges are incorporated into the Bayesian model as a soft constraint. Accelerated belief propagation is applied to obtain the maximum a posteriori estimates in the Markov random field. The proposed algorithm is evaluated using the Middlebury stereo benchmark. Our experimental results comparing with some state-of-the-art stereo matching methods demonstrate that the proposed method provides superior disparity maps with a subpixel precision.Entities:
Keywords: MAP-MRF; belief propagation; edge classify; local affine model
Year: 2012 PMID: 25309710 PMCID: PMC4192720 DOI: 10.4156/ijact.vol4.issue22.5
Source DB: PubMed Journal: Int J Adv Comput Technol ISSN: 2005-8039