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Deformable Template Models and Bayesian Framework

A Bayesian approach is very useful when prior knowledge of a process is available which needs to be combined with the sensed data to make statistical inferences about the parameters of the process. Statistical approaches to image analysis using the Bayesian paradigm have been popular in recent years because of their capability to integrate low-level image analysis and high-level tasks, as well as fuse data from different sensors. Deformable template matching can be formulated using the Bayesian framework [27,39,36]. In fact, in most cases, we can encode the structure and constraints about the deformable template in terms of the prior and select an appropriate likelihood function based on the sensor process in a Bayesian scenario so that the corresponding Maximum A Posteriori (MAP) estimate is equivalent to the solution of the original deformable matching problem.




Bob Fisher
Wed May 5 18:16:24 BST 1999