In this letter, we propose hierarchical principal component analysis (HPCA) techniques for fusing spatial and spectral data, and compare them to direct principal component analysis (DPCA) over Multiangle Imaging SpectroRadiometer (MISR) data. It is shown that the proposed methods are significantly faster than DPCA. In case of DPCA, we merge the 20 different images resulting from the four spectral bands over the nadir and the four forward angles. In the hierarchical case, we first merge the information from the four spectral camera bands; then, we integrate the spatial information from the five cameras in the second step (or vice versa) by applying principal component analysis (PCA) twice. The classification results show that fused data usin...
We demonstrate a wavefront sensor that unites weak measurement and the compressive-sensing, single-p...
We describe a method to obtain the principal components of a multispectral image. It allows a simult...
PCA is widely used in this context but its linear features are optimal in error reconstruction terms...
Abstract — Principal Component Analysis (PCA) has been widely used as a data reduction technique to ...
Dust storms are naturally occurring events that take place in arid and semi- arid regions of the Ear...
We propose to optimize the use of new computer power, observational data systems, and telecommunicat...
The paper presents a concurrent algorithm for remote sensing applications that provides significant ...
Seeding Brillouin scattering with a sufficiently efficient source of coherent phonons has the potent...
In the paper, experiments and analysis of three pixel-based fusion methods had been discussed. The f...
Wildfire management in the eastern U.S. is more complex than in the west because of higher populatio...
We demonstrate how to efficiently implement extremely high-dimensional compressive imaging of a bi-p...
Publicly available Digital Elevation Models (DEM) derived from various space-based platforms (Satell...
As hyperspectral imagery (HSI) contains rich spectral and spatial information, a novel principal com...
This study demonstrates the use of a geographically weighted principal components analysis (GWPCA) o...
For more than 2 decades, crop residues in Punjab, a region spanning northwestern India and eastern P...
We demonstrate a wavefront sensor that unites weak measurement and the compressive-sensing, single-p...
We describe a method to obtain the principal components of a multispectral image. It allows a simult...
PCA is widely used in this context but its linear features are optimal in error reconstruction terms...
Abstract — Principal Component Analysis (PCA) has been widely used as a data reduction technique to ...
Dust storms are naturally occurring events that take place in arid and semi- arid regions of the Ear...
We propose to optimize the use of new computer power, observational data systems, and telecommunicat...
The paper presents a concurrent algorithm for remote sensing applications that provides significant ...
Seeding Brillouin scattering with a sufficiently efficient source of coherent phonons has the potent...
In the paper, experiments and analysis of three pixel-based fusion methods had been discussed. The f...
Wildfire management in the eastern U.S. is more complex than in the west because of higher populatio...
We demonstrate how to efficiently implement extremely high-dimensional compressive imaging of a bi-p...
Publicly available Digital Elevation Models (DEM) derived from various space-based platforms (Satell...
As hyperspectral imagery (HSI) contains rich spectral and spatial information, a novel principal com...
This study demonstrates the use of a geographically weighted principal components analysis (GWPCA) o...
For more than 2 decades, crop residues in Punjab, a region spanning northwestern India and eastern P...
We demonstrate a wavefront sensor that unites weak measurement and the compressive-sensing, single-p...
We describe a method to obtain the principal components of a multispectral image. It allows a simult...
PCA is widely used in this context but its linear features are optimal in error reconstruction terms...