This study demonstrates the use of a geographically weighted principal components analysis (GWPCA) of remote sensing imagery to improve land cover classification accuracy. A principal components analysis (PCA) is commonly applied in remote sensing but generates global, spatially-invariant results. GWPCA is a local adaptation of PCA that locally transforms the image data, and in doing so, can describe spatial change in the structure of the multi-band imagery, thus directly reflecting that many landscape processes are spatially heterogenic. In this research the GWPCA localised loadings of MODIS data are used as textural inputs, along with GWPCA localised ranked scores and the image bands themselves to three supervised classification algorithm...
International audienceKernel principal component analysis (KPCA) is investigated for feature extract...
A through observation and mapping of land-use (LU) and land-cover (LC) is essential these days for p...
ABSTRACT: The radiometric normalization of multitemporal satellite is a fundamental and important pr...
In many physical geography settings, principal component analysis (PCA) is applied without considera...
Environmental changes are amongst the most important research subjects in geography. The changes may...
<p>The main objective of this article was to show an application of principal component analysis (PC...
In many physical geography settings, principal component analysis (PCA) is applied without consider...
The error matrix is the most common way of expressing the accuracy of remote sensing image classific...
The error matrix is the most common way of expressing the accuracy of remote sensing image classific...
The purpose of the present study was to review, evaluate and explore methodologies in classifying re...
Pixel-based and object-based classifications are two commonly used approaches in extracting land cov...
Principal Component Analysis (PCA) is a method based on statistics and linear algebra techniques, us...
Remotely sensed imagery is one of the most important data sources for large-scale and multi-temporal...
Abstract 11 The error matrix is the most common way of expressing the accuracy of remote 12 sensing ...
Landsat-like moderate resolution remote sensing images are widely used in land use and land cover (L...
International audienceKernel principal component analysis (KPCA) is investigated for feature extract...
A through observation and mapping of land-use (LU) and land-cover (LC) is essential these days for p...
ABSTRACT: The radiometric normalization of multitemporal satellite is a fundamental and important pr...
In many physical geography settings, principal component analysis (PCA) is applied without considera...
Environmental changes are amongst the most important research subjects in geography. The changes may...
<p>The main objective of this article was to show an application of principal component analysis (PC...
In many physical geography settings, principal component analysis (PCA) is applied without consider...
The error matrix is the most common way of expressing the accuracy of remote sensing image classific...
The error matrix is the most common way of expressing the accuracy of remote sensing image classific...
The purpose of the present study was to review, evaluate and explore methodologies in classifying re...
Pixel-based and object-based classifications are two commonly used approaches in extracting land cov...
Principal Component Analysis (PCA) is a method based on statistics and linear algebra techniques, us...
Remotely sensed imagery is one of the most important data sources for large-scale and multi-temporal...
Abstract 11 The error matrix is the most common way of expressing the accuracy of remote 12 sensing ...
Landsat-like moderate resolution remote sensing images are widely used in land use and land cover (L...
International audienceKernel principal component analysis (KPCA) is investigated for feature extract...
A through observation and mapping of land-use (LU) and land-cover (LC) is essential these days for p...
ABSTRACT: The radiometric normalization of multitemporal satellite is a fundamental and important pr...