Remote sensing is being increasingly used over the last few decades as a powerful tool for monitoring, study and analysis of the surface of the earth as well as the atmosphere. In this paper we shall consider temporally adaptive pattern recognition techniques for land-cover classification in multitemporal and multispectral remote sensing images. The technique comprises of pre-processing using global and classwise probability density function (PDF) matching for temporally adapting the statistics before classification. We focus on the utility of these techniques in generating improved partially unsupervised land-cover classifiers and their comparative study
This paper addresses the problem of matching the statistical properties of the distributions of two ...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
Remote sensing is being increasingly used over the last few decades as a powerful tool for monitorin...
This paper addresses the problem of detecting land-cover transitions by analysing multitemporal remo...
This chapter revises the recent advances in the automatic classification of remote sensing (RS) imag...
Developments in the technology of registering images collected by a multispectral scanner over the s...
Most existing multi-temporal classification studies use spectral information alone and ignore the te...
The objective of this study is to develop high accuracy land cover classification algorithm for Glob...
In this paper, detection of land-cover/land-use transitions by using multitemporal remote-sensing im...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
The objective of this study is to develop high accuracy land cover classification algorithm for Glob...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
Land cover classification of remote sensing data is a fundamental tool to study changes in the envir...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
This paper addresses the problem of matching the statistical properties of the distributions of two ...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
Remote sensing is being increasingly used over the last few decades as a powerful tool for monitorin...
This paper addresses the problem of detecting land-cover transitions by analysing multitemporal remo...
This chapter revises the recent advances in the automatic classification of remote sensing (RS) imag...
Developments in the technology of registering images collected by a multispectral scanner over the s...
Most existing multi-temporal classification studies use spectral information alone and ignore the te...
The objective of this study is to develop high accuracy land cover classification algorithm for Glob...
In this paper, detection of land-cover/land-use transitions by using multitemporal remote-sensing im...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
The objective of this study is to develop high accuracy land cover classification algorithm for Glob...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
Land cover classification of remote sensing data is a fundamental tool to study changes in the envir...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
This paper addresses the problem of matching the statistical properties of the distributions of two ...
International audienceLand cover classification of remote sensing data is a fundamental tool to stud...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...