Linear Spectral Mixture Analysis (LSMA) has been widely used in the remote sensing community. It assumes that a data sample vector is linearly mixed by a set of distinct signatures as a linear mixture from which it can be further unmixed as abundance fractions in terms of these signatures. While LSMA has shown to be a promising spectral unmixing technique in remote sensing image analysis, it also suffers from an issue of nonlinear separability encountered in both multispectral and hyperspectral image processing. To resolve this dilemma, a kernel-based LSMA (KLSMA) is proposed in this dissertation, which projects data samples into a high dimensional feature space to solve linearly non-separable problems. Similar techniques are further used t...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
International audienceKernel-based nonlinear mixing models have been applied to unmix spectral infor...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
Linear Spectral Mixture Analysis (LSMA) has been widely used in the remote sensing community. It ass...
Abstract—Linear spectral mixture analysis (LSMA) has re-ceived wide interests for spectral unmixing ...
The objective of this dissertation is to investigate all the necessary components in spectral mixtur...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...
Two of the most challenging issues in the unsupervised linear spectral mixture analysis (ULSMA) are:...
This paper develops a new approach to band subset selection (BSS) for hyperspectral image classifica...
Hyperspectral imaging systems generate large volumes of data that contain the subtle yet critical kn...
Hyperspectral imaging systems generate large volumes of data that contain the subtle yet critical kn...
The problem of band selection (BS) is of great importance to handle the curse of dimensionality for ...
Constrained energy minimization (CEM) has shown effective in hyperspectral target detection. It line...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
The ability to determine optimal spectral band sets for the exploitation of multispectral and hypers...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
International audienceKernel-based nonlinear mixing models have been applied to unmix spectral infor...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...
Linear Spectral Mixture Analysis (LSMA) has been widely used in the remote sensing community. It ass...
Abstract—Linear spectral mixture analysis (LSMA) has re-ceived wide interests for spectral unmixing ...
The objective of this dissertation is to investigate all the necessary components in spectral mixtur...
International audienceThe most challenges problems in hyperspectral images processing are the huge a...
Two of the most challenging issues in the unsupervised linear spectral mixture analysis (ULSMA) are:...
This paper develops a new approach to band subset selection (BSS) for hyperspectral image classifica...
Hyperspectral imaging systems generate large volumes of data that contain the subtle yet critical kn...
Hyperspectral imaging systems generate large volumes of data that contain the subtle yet critical kn...
The problem of band selection (BS) is of great importance to handle the curse of dimensionality for ...
Constrained energy minimization (CEM) has shown effective in hyperspectral target detection. It line...
International audienceIn order to alleviate the negative effect of curse of dimensionality, band sel...
The ability to determine optimal spectral band sets for the exploitation of multispectral and hypers...
The analysis of hyperspectral images is usually very heavy from the computational point-of-view, due...
International audienceKernel-based nonlinear mixing models have been applied to unmix spectral infor...
International audienceSpectral optimization consists in identifying the most relevant band subset fo...