Fourth Mexican International Conference on Computer Science
Hidden Markov Measure Fields for Disparity Estimation
Tlaxcala, Mexico
September 08-September 12
ISBN: 0-7695-1915-6
Stereo mathcing is one of the most active research areas in computer vision and many algorithms have been developed to solve the problem of stereo correspondence. In this work it is proposed a parametric model based on a new Bayesian formulation to solve the correspondence problem, using a doubly stochastic prior model that allows one to find optimal estimators by the minimization of a differentiable function. This approach also allows one to incorporate edge information to avoid erroneous matching in large regions with homogenous intensities. Finally some experiments are presented, comparing the results with today?s best-performing stereo algorithms.