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Titlebook: Bayesian Modeling of Uncertainty in Low-Level Vision; Richard Szeliski Book 1989 Kluwer Academic Publishers 1989 Markov random field.Optic

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楼主: implicate
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Prior models, as the prior probabilities of different terrain types used in our remote sensing example of Section 3.1, or as complicated as the initial state (position, orientation and velocity) estimate of a satellite in a Kaiman filter on-line estimation system. When applied to low-level vision, prior models e
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Sensor models,thies and Shafer 1987). In the context of the Bayesian estimation framework, sensor models form the second major component of our Bayesian model. In this chapter, we will examine a number of different sensor models which arise from both sparse (symbolic) and dense (iconic) measurements.
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Incremental algorithms for depth-from-motion,m multiple viewpoints, and to analyze the uncertainty in our estimates. Many computer vision applications, however, deal with dynamic environments. This may involve tracking moving objects or updating the model of the environment as the observer moves around. Recent results by Aloimonos . (1987) sug
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Incremental algorithms for depth-from-motion,gest that taking an active role in vision (either through eye or observer movements) greatly simplifies the complexity of certain low-level vision problems. In this chapter, we will examine one such problem, namely the recovery of depth from motion sequences.
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Springer Series in Design and Innovation instance of this world is related to the observations (such as images) which we make. The posterior model, which is obtained by combining the prior and sensor models using Bayes’ Rule, describes our current estimate of the world given the data which we have observed.
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