International audienceThe generalization of mathematical morphology to multivariate images is addressed in this paper. The proposed approach is fully unsupervised and consists in constructing a complete lattice from an image as a rank transformation together with a learned ordering of vectors. This unsupervised ordering of vectors relies on three steps: dictionary learning, manifold learning and out of sample extension. In addition to providing an efficient way to construct a vectorial ordering, nonlocal configurations based on color patches can be easily handled and provide much better results than with classical local morphological approaches
International audienceIn this paper, we are presenting a new vector order, a solution to the open pr...
International audienceThe extension of mathematical morphology to mul-tivariate data has been an act...
International audienceMathematical Morphology (MM) offers a wide range of operators to address vario...
International audienceThe generalization of mathematical morphology to multivariate images is addres...
International audienceThe generalization of mathematical morphology to multivariate vector spaces is...
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...
Since mathematical morphology is based on complete lattice theory, a vector order-ing method becomes...
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 a challengi...
The extension of mathematical morphology to color and more generally to multivariate image data is s...
This chapter illustrates the suitability of recent multivariate ordering approaches to morphological...
Mathematical morphology is not always straightforward to generalize to situations where values in an...
International audienceIn this paper, a new formulation of patch-based adap-tive mathematical morphol...
In this paper, we present the results of the extension of the mathematical morphology to color image...
International audienceIn this paper, we are presenting a new vector order, a solution to the open pr...
International audienceThe extension of mathematical morphology to mul-tivariate data has been an act...
International audienceMathematical Morphology (MM) offers a wide range of operators to address vario...
International audienceThe generalization of mathematical morphology to multivariate images is addres...
International audienceThe generalization of mathematical morphology to multivariate vector spaces is...
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...
Since mathematical morphology is based on complete lattice theory, a vector order-ing method becomes...
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 a challengi...
The extension of mathematical morphology to color and more generally to multivariate image data is s...
This chapter illustrates the suitability of recent multivariate ordering approaches to morphological...
Mathematical morphology is not always straightforward to generalize to situations where values in an...
International audienceIn this paper, a new formulation of patch-based adap-tive mathematical morphol...
In this paper, we present the results of the extension of the mathematical morphology to color image...
International audienceIn this paper, we are presenting a new vector order, a solution to the open pr...
International audienceThe extension of mathematical morphology to mul-tivariate data has been an act...
International audienceMathematical Morphology (MM) offers a wide range of operators to address vario...