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4 March 2014Iterative compressive sampling for hyperspectral images via source separation
Compressive Sensing (CS) is receiving increasing attention as a way to lower storage and compression requirements
for on-board acquisition of remote-sensing images. In the case of multi- and hyperspectral images, however,
exploiting the spectral correlation poses severe computational problems. Yet, exploiting such a correlation would
provide significantly better performance in terms of reconstruction quality. In this paper, we build on a recently
proposed 2D CS scheme based on blind source separation to develop a computationally simple, yet accurate,
prediction-based scheme for acquisition and iterative reconstruction of hyperspectral images in a CS setting.
Preliminary experiments carried out on different hyperspectral images show that our approach yields a dramatic
reduction of computational time while ensuring reconstruction performance similar to those of much more
complicated 3D reconstruction schemes.
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S. Kamdem Kuiteing, Mauro Barni, "Iterative compressive sampling for hyperspectral images via source separation," Proc. SPIE 9022, Image Sensors and Imaging Systems 2014, 90220T (4 March 2014); https://doi.org/10.1117/12.2037794