We formulate several problems in early vision as inverse problems. Among the solution methods we review standard regularization theory, discuss its limitations, and present new stochastic (in particular, Bayesian) techniques based on Markov Random Field models for their solution. We derive efficient algorithms and describe parallel implementations on digital parallel SIMD architectures, as well as a new class of parallel hybrid computers that mix digital with analog components
One of the best definitions of early vision is that it is inverse optics --- a set of computationa...
International audienceIn this paper, we present a comprehensive survey of Markov Random Fields (MRFs...
We propose a general synchronous model of lattice random fields which could be used similarly to Gib...
The first processing stage in computational vision, also called early vision, consists in decoding...
In this thesis we study the general problem of reconstructing a function, defined on a finite lattic...
We outline a theoretical framework that leads from the computational nature of early vision to algor...
Descriptions of physical properties of visible surfaces, such as their distance and the presence of ...
International audienceProbabilistic approaches have been brought to image analysis starting with the...
In this tutorial we explained a unified view of many image processing and computer vision problems b...
In this report we advocate the use of computationally simple algorithms for computer vision, operati...
Image restoration and denoising is an essential preprocessing step for almost every subsequent task ...
The power of Markov random field formulations of lowlevel vision problems, such as stereo, has been ...
Abstract paper shows that the ave rage or most likely (optima l) esti Many of the processing tasks a...
In this paper, we present a comprehensive survey of Markov Random Fields (MRFs) in computer vision, ...
The focus of this book is on "ill-posed inverse problems". These problems cannot be solved only on t...
One of the best definitions of early vision is that it is inverse optics --- a set of computationa...
International audienceIn this paper, we present a comprehensive survey of Markov Random Fields (MRFs...
We propose a general synchronous model of lattice random fields which could be used similarly to Gib...
The first processing stage in computational vision, also called early vision, consists in decoding...
In this thesis we study the general problem of reconstructing a function, defined on a finite lattic...
We outline a theoretical framework that leads from the computational nature of early vision to algor...
Descriptions of physical properties of visible surfaces, such as their distance and the presence of ...
International audienceProbabilistic approaches have been brought to image analysis starting with the...
In this tutorial we explained a unified view of many image processing and computer vision problems b...
In this report we advocate the use of computationally simple algorithms for computer vision, operati...
Image restoration and denoising is an essential preprocessing step for almost every subsequent task ...
The power of Markov random field formulations of lowlevel vision problems, such as stereo, has been ...
Abstract paper shows that the ave rage or most likely (optima l) esti Many of the processing tasks a...
In this paper, we present a comprehensive survey of Markov Random Fields (MRFs) in computer vision, ...
The focus of this book is on "ill-posed inverse problems". These problems cannot be solved only on t...
One of the best definitions of early vision is that it is inverse optics --- a set of computationa...
International audienceIn this paper, we present a comprehensive survey of Markov Random Fields (MRFs...
We propose a general synchronous model of lattice random fields which could be used similarly to Gib...