This work proposes a hybrid approach to address the pansharpening of hyperspectral images, which mixes the use of a recently proposed CNN-based solution and a classical solution such as the Gram Schmidt Adaptive method (GSA). The hyperspectral datacube is split in two sets of bands, those falling in the visible range and the remaining ones. The first set is pansharpened using the GSA approach which has proven to grant very high quality results in this range. The remaining bands, whose relationship with the panchromatic band is much weaker, undergo a fusion process based on a recently proposed hyperspectral pansharpening method known as Rolling hyperspectral Pansharpening Neural Network (R-PNN). By doing so, we are able to take the best features from both solutions, getting higher quality results compared to the marginal use of any of the two methods.
Hybrid GSA-CNN Method for Hyperspectral Pansharpening
Scarpa G.
2024-01-01
Abstract
This work proposes a hybrid approach to address the pansharpening of hyperspectral images, which mixes the use of a recently proposed CNN-based solution and a classical solution such as the Gram Schmidt Adaptive method (GSA). The hyperspectral datacube is split in two sets of bands, those falling in the visible range and the remaining ones. The first set is pansharpened using the GSA approach which has proven to grant very high quality results in this range. The remaining bands, whose relationship with the panchromatic band is much weaker, undergo a fusion process based on a recently proposed hyperspectral pansharpening method known as Rolling hyperspectral Pansharpening Neural Network (R-PNN). By doing so, we are able to take the best features from both solutions, getting higher quality results compared to the marginal use of any of the two methods.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.