International audienceThe extension of lattice based operators to multivariate images is a challenging theme in mathematical morphology. We propose to consider manifold learning as the basis for the construction of a complete lattice by learning graph neighborhood topological order. With these propositions, we dispose of a general formulation of morphological operators on graphs that enables us to process by morphological means any kind of data modeled by a graph
Morphological operators are nonlinear transformations commonly used in image processing. Their theor...
A morphological neural network is generally defined as a type of artificial neural network that perf...
International audienceIn this article we introduce mathematical morphology on hypergraphs. We first ...
International audienceThe extension of lattice based operators to manifolds is still a challenging t...
International audienceThe extension of lattice based operators to multivariate images is still a cha...
International audienceThe extension of lattice based operators to multivariate images is still a cha...
International audienceThe generalization of mathematical morphology to multivariate vector spaces is...
International audienceThe extension of lattice based operators to manifolds is still a challenging t...
International audienceThis paper presents a framework for morphological processing of graph signals ...
International audienceThis paper presents a framework for morphological processing of graph signals ...
International audienceThe generalization of mathematical morphology to multivariate images is addres...
International audienceThe generalization of mathematical morphology to multivariate images is addres...
Abstract: A method for building neighborhood graphs using morphological operators is presented in th...
International audienceIn this paper, a new formulation of patch-based adap-tive mathematical morphol...
IBM Student Paper AwardInternational audienceThe main tools of Mathematical Morphology are a broad c...
Morphological operators are nonlinear transformations commonly used in image processing. Their theor...
A morphological neural network is generally defined as a type of artificial neural network that perf...
International audienceIn this article we introduce mathematical morphology on hypergraphs. We first ...
International audienceThe extension of lattice based operators to manifolds is still a challenging t...
International audienceThe extension of lattice based operators to multivariate images is still a cha...
International audienceThe extension of lattice based operators to multivariate images is still a cha...
International audienceThe generalization of mathematical morphology to multivariate vector spaces is...
International audienceThe extension of lattice based operators to manifolds is still a challenging t...
International audienceThis paper presents a framework for morphological processing of graph signals ...
International audienceThis paper presents a framework for morphological processing of graph signals ...
International audienceThe generalization of mathematical morphology to multivariate images is addres...
International audienceThe generalization of mathematical morphology to multivariate images is addres...
Abstract: A method for building neighborhood graphs using morphological operators is presented in th...
International audienceIn this paper, a new formulation of patch-based adap-tive mathematical morphol...
IBM Student Paper AwardInternational audienceThe main tools of Mathematical Morphology are a broad c...
Morphological operators are nonlinear transformations commonly used in image processing. Their theor...
A morphological neural network is generally defined as a type of artificial neural network that perf...
International audienceIn this article we introduce mathematical morphology on hypergraphs. We first ...