International audienceThis paper addresses the linear spectral unmixing problem, by incorporating different constraints that may be of interest in order to cope with spectral variability: sparsity (few nonzero abundances), group exclusivity (at most one nonzero abundance within subgroups of endmembers) and significance (non-zero abundances must exceed a threshold). We show how such problems can be solved exactly with mixed-integer programming techniques. Numerical simulations show that solutions can be computed for problems of limited, yet realistic , complexity, with improved estimation performance over existing methods, but with higher computing time. Index Terms-sparse spectral unmixing, L0-norm optimization , structured sparsity, mixed-...
Spectral unmixing is a popular technique for hyperspectral data interpretation. It focuses on estima...
Recently, many sparse approximation methods have been applied to solve spectral unmixing problems. T...
Sparse spectral unmixing can be modeled as a linear combination of endmembers contained in an overco...
International audienceThis paper addresses the linear spectral unmixing problem, by incorporating di...
National audience-We propose an l0-norm based optimisation approach to the sparse linear spectral un...
In this work, we exploit two assumed properties of the abundances of the observed signatures (endmem...
Abstract. Recently, sparse unmixing focuses on finding an optimal subset of spectral signatures in a...
International audienceHyperspectral images provide much more information than conventional imaging t...
Hyperspectral images provide much more information than conventional imaging techniques, allowing a ...
Sparse unmixing (SU) has been widely investigated for hyperspectral analysis with the aim to find th...
We apply social ℓ-norms for the first time to the problem of hyperspectral unmixing while modeling s...
Abstract—Hyperspectral unmixing (HU) plays a fundamental role in a wide range of hyperspectral appli...
Sparse approximation aims to fit a linear model in a least-squares sense, with a small number of non-...
Spectral unmixing is a popular technique for hyperspectral data interpretation. It focuses on estima...
Recently, many sparse approximation methods have been applied to solve spectral unmixing problems. T...
Sparse spectral unmixing can be modeled as a linear combination of endmembers contained in an overco...
International audienceThis paper addresses the linear spectral unmixing problem, by incorporating di...
National audience-We propose an l0-norm based optimisation approach to the sparse linear spectral un...
In this work, we exploit two assumed properties of the abundances of the observed signatures (endmem...
Abstract. Recently, sparse unmixing focuses on finding an optimal subset of spectral signatures in a...
International audienceHyperspectral images provide much more information than conventional imaging t...
Hyperspectral images provide much more information than conventional imaging techniques, allowing a ...
Sparse unmixing (SU) has been widely investigated for hyperspectral analysis with the aim to find th...
We apply social ℓ-norms for the first time to the problem of hyperspectral unmixing while modeling s...
Abstract—Hyperspectral unmixing (HU) plays a fundamental role in a wide range of hyperspectral appli...
Sparse approximation aims to fit a linear model in a least-squares sense, with a small number of non-...
Spectral unmixing is a popular technique for hyperspectral data interpretation. It focuses on estima...
Recently, many sparse approximation methods have been applied to solve spectral unmixing problems. T...
Sparse spectral unmixing can be modeled as a linear combination of endmembers contained in an overco...