Hyperspectral imaging (HSI) provides additional information compared to regular color imaging, making it valuable in areas such as biomedicine, materials inspection and food safety. However, HSI is challenging because of the large amount of data and long measurement times involved. Compressed sensing (CS) approaches to HSI address this, albeit subject to tradeoffs between image reconstruction accuracy, time and generalizability to different types of scenes. Here, we develop improved CS approaches for HSI, based on parallelized multitrack acquisition of multiple spectra per shot. The multitrack architecture can be paired up with either of the two compatible CS algorithms developed here: (1) a sparse recovery algorithm based on block compress...
International audienceHyperspectral imaging has been attracting considerable interest as it provides...
Compressed Sensing (CS) allows to represent sparse signals through a small number of linear projecti...
Compressed Sensing (CS) allows to represent sparse signals through a small number of linear projecti...
Hyperspectral imaging (HSI) provides additional information compared to regular color imaging, makin...
Hyperspectral imaging (HSI) provides additional information compared to regular color imaging, makin...
Hyperspectral imaging (HSI) provides additional information compared to regular color imaging, makin...
Acquisition of high dimensional Hyperspectral Imaging (HSI) data using limited dimensionality imagin...
Hyperspectral images comprise of light intensity information resolved into two spatial dimensions an...
Compressed Sensing (CS) theory is progressively gaining more interest over scientists of different f...
The ever-increasing resolution puts tremendous pressure to the onboard hyperspectral imaging system....
Hyperspectral imaging typically produces huge data volume that demands enormous computational resour...
We propose a novel approach to reconstruct Hyperspectral images from very few number of noisy compre...
Compressive sensing (CS) (Candes and Tao 2006) has recently emerged as an efficient technique for sa...
This paper studies the fast acquisition of Hyper- Spectral (HS) data using Fourier transform interfe...
Compressive sensing (CS) (Candes and Tao 2006) has recently emerged as an efficient technique for sa...
International audienceHyperspectral imaging has been attracting considerable interest as it provides...
Compressed Sensing (CS) allows to represent sparse signals through a small number of linear projecti...
Compressed Sensing (CS) allows to represent sparse signals through a small number of linear projecti...
Hyperspectral imaging (HSI) provides additional information compared to regular color imaging, makin...
Hyperspectral imaging (HSI) provides additional information compared to regular color imaging, makin...
Hyperspectral imaging (HSI) provides additional information compared to regular color imaging, makin...
Acquisition of high dimensional Hyperspectral Imaging (HSI) data using limited dimensionality imagin...
Hyperspectral images comprise of light intensity information resolved into two spatial dimensions an...
Compressed Sensing (CS) theory is progressively gaining more interest over scientists of different f...
The ever-increasing resolution puts tremendous pressure to the onboard hyperspectral imaging system....
Hyperspectral imaging typically produces huge data volume that demands enormous computational resour...
We propose a novel approach to reconstruct Hyperspectral images from very few number of noisy compre...
Compressive sensing (CS) (Candes and Tao 2006) has recently emerged as an efficient technique for sa...
This paper studies the fast acquisition of Hyper- Spectral (HS) data using Fourier transform interfe...
Compressive sensing (CS) (Candes and Tao 2006) has recently emerged as an efficient technique for sa...
International audienceHyperspectral imaging has been attracting considerable interest as it provides...
Compressed Sensing (CS) allows to represent sparse signals through a small number of linear projecti...
Compressed Sensing (CS) allows to represent sparse signals through a small number of linear projecti...