International audienceIn this article we consider macrocanonical models for texture synthesis. In these models samples are generated given an input texture image and a set of features which should be matched in expectation. It is known that if the images are quantized, macrocanonical models are given by Gibbs measures, using the maximum entropy principle. We study conditions under which this result extends to real-valued images. If these conditions hold, finding a macrocanonical model amounts to minimizing a convex function and sampling from an associated Gibbs measure. We analyze an algorithm which alternates between sampling and minimizing. We present experiments with neural network features and study the drawbacks and advantages of using...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
International audienceIn this article we consider macrocanonical models for texture synthesis. In th...
International audienceIn this article we consider macrocanonical models for texture synthesis. In th...
In this thesis we study two non-localstatistics in images from a probabilistic point of view: spatia...
In this thesis we study two non-local statistics in images from a probabilistic point of view: spa...
This article presents a statistical theory for texture modeling. This theory combines filtering theo...
Abstract. This article presents a statistical theory for texture modeling. This theory combines filt...
This paper presents a mathematical framework for visual learning that integrates two popular statist...
Abstract. This paper presents a statistical model for textures that uses a non-negative decompositio...
This article presents a mathematical denition of texture pattern{the Julesz ensemble, which is the ...
To be published as a conference paper at the International Conference on Learning Representations (I...
To be published as a conference paper at the International Conference on Learning Representations (I...
To be published as a conference paper at the International Conference on Learning Representations (I...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
International audienceIn this article we consider macrocanonical models for texture synthesis. In th...
International audienceIn this article we consider macrocanonical models for texture synthesis. In th...
In this thesis we study two non-localstatistics in images from a probabilistic point of view: spatia...
In this thesis we study two non-local statistics in images from a probabilistic point of view: spa...
This article presents a statistical theory for texture modeling. This theory combines filtering theo...
Abstract. This article presents a statistical theory for texture modeling. This theory combines filt...
This paper presents a mathematical framework for visual learning that integrates two popular statist...
Abstract. This paper presents a statistical model for textures that uses a non-negative decompositio...
This article presents a mathematical denition of texture pattern{the Julesz ensemble, which is the ...
To be published as a conference paper at the International Conference on Learning Representations (I...
To be published as a conference paper at the International Conference on Learning Representations (I...
To be published as a conference paper at the International Conference on Learning Representations (I...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...
We study an extension to non causal Markov random fields of the resampling scheme given in Bickel et...