This chapter considers the use of statistical modelling approaches and stochastic estimation algorithms for the reconstruction of images from data. A key distinguishing feature of statistical image reconstruction, compared to classical deterministic approaches, is the explicit use of statistical descriptions and probability models. This provides an intuitiveand flexible framework within which the whole modelling and reconstruction process can be described. In essence, the relationship between data and parameters is described by a likelihood and relationships between parameters described by prior distributions. These are combined using Bayes theorem to produce a posterior distribution which is used as the basis for reconstruction. The result...
Abstract—Using a stochastic framework, we propose two algorithms for the problem of obtaining a sing...
. Sampling techniques are used to explore the Bayesian posterior density in imaging problems. Beside...
Presented in this thesis are multiresolution image models and Bayesian algorithms for statistical im...
Statistical methods for approaching image reconstruction and restoration problems have generated muc...
International audienceProbabilistic approaches have been brought to image analysis starting with the...
International audienceProbabilistic approaches have been brought to image analysis starting with the...
This thesis originates from the problem of reconstructing the three-dimensional shape of objects, wh...
In this article, we present and discuss three statistical methods for Surface Reconstruction. A typi...
In this chapter, an overview of the theory of probability, statistical and machine learning is made ...
The set of all possible visual images is huge, but not all of these are equally likely to be encount...
Two important issues, computation and model evaluation, in general nonlinear image restoration are a...
Many image processing problems can be presented as inverse problems by modeling the relation of the ...
Abstract Random fields serve as natural models for patterns with random fluctuations. Given a parame...
In this research, a stochastic model for attenuation in Computer Tomography is developed. This model...
This thesis is concerned with statistical image analysis: the estimation of parameters within image ...
Abstract—Using a stochastic framework, we propose two algorithms for the problem of obtaining a sing...
. Sampling techniques are used to explore the Bayesian posterior density in imaging problems. Beside...
Presented in this thesis are multiresolution image models and Bayesian algorithms for statistical im...
Statistical methods for approaching image reconstruction and restoration problems have generated muc...
International audienceProbabilistic approaches have been brought to image analysis starting with the...
International audienceProbabilistic approaches have been brought to image analysis starting with the...
This thesis originates from the problem of reconstructing the three-dimensional shape of objects, wh...
In this article, we present and discuss three statistical methods for Surface Reconstruction. A typi...
In this chapter, an overview of the theory of probability, statistical and machine learning is made ...
The set of all possible visual images is huge, but not all of these are equally likely to be encount...
Two important issues, computation and model evaluation, in general nonlinear image restoration are a...
Many image processing problems can be presented as inverse problems by modeling the relation of the ...
Abstract Random fields serve as natural models for patterns with random fluctuations. Given a parame...
In this research, a stochastic model for attenuation in Computer Tomography is developed. This model...
This thesis is concerned with statistical image analysis: the estimation of parameters within image ...
Abstract—Using a stochastic framework, we propose two algorithms for the problem of obtaining a sing...
. Sampling techniques are used to explore the Bayesian posterior density in imaging problems. Beside...
Presented in this thesis are multiresolution image models and Bayesian algorithms for statistical im...