2015
DOI: 10.1364/jot.82.000495
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Generative and probability models in image processing and computer vision

Abstract: This paper gives an analysis of the role of generative models in image processing and computer vision. Oriented and unoriented graphical models (Bayesian and Markov networks) are considered, along with the possibilities of using them in image processing, in particular, to solve problems of noise filtering, segmentation, and stereo vision. Probability programming is considered as a method of specifying arbitrary generative models that possess substantially larger expressive force than graphical models. It is sh… Show more

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