Hyperspectral images are widely used in several real-life applications. In this paper, we investigate on the compression of hyperspectral images by considering different aspects, including the optimization of the computational complexity in order to allow implementations on limited hardware (i.e., hyperspectral sensors, etc.). We present an approach that relies on a three-dimensional predictive structure. Our predictive structure, 3D-MBLP, uses one or more previous bands as references to exploit the redundancies among the third dimension. The achieved results are comparable, and often better, with respect to the other state-of-art lossless compression techniques for hyperspectral images
This paper presents a novel scheme for lossless/near-lossless hyperspectral image compression, that ...
Hyperspectral imaging is widely used in many applications; especially in vegetation, climate changes...
Hyperspectral image consist of a set of contiguous images bands collected by a hyperspectral sensor....
Hyperspectral images are widely used in several real-life applications. In this paper, we investigat...
Hyperspectral images are widely used in several real-life applications. In this paper, we investigat...
Hyperspectral remote sensing produces a huge amount of three-dimensional digital data: t...
Abstract:- A spectral linear prediction compression scheme for lossless compression of hyperspectral...
Algorithms for lossless and lossy compression of hyperspectral images are presented. To greatly redu...
International audienceThis paper deals with analysis of component-wise and three-dimensional (3D) lo...
Abstract:- An efficient lossless compression algorithm for 3D sounding data is presented. Major phas...
We present a new low-complexity algorithm for hyperspectral image compression that uses linear predi...
This Aiming at improving the lossless compression ratio of hyperspectral image, a three-dimensional ...
Hyperspectral imaging (HSI) technology has been used for various remote sensing applications due to ...
Lossy compression of hyperspectral and ultraspectral images is traditionally performed using 3D tran...
This paper considers an approach to the compression of hyperspectral remote sensing data by an origi...
This paper presents a novel scheme for lossless/near-lossless hyperspectral image compression, that ...
Hyperspectral imaging is widely used in many applications; especially in vegetation, climate changes...
Hyperspectral image consist of a set of contiguous images bands collected by a hyperspectral sensor....
Hyperspectral images are widely used in several real-life applications. In this paper, we investigat...
Hyperspectral images are widely used in several real-life applications. In this paper, we investigat...
Hyperspectral remote sensing produces a huge amount of three-dimensional digital data: t...
Abstract:- A spectral linear prediction compression scheme for lossless compression of hyperspectral...
Algorithms for lossless and lossy compression of hyperspectral images are presented. To greatly redu...
International audienceThis paper deals with analysis of component-wise and three-dimensional (3D) lo...
Abstract:- An efficient lossless compression algorithm for 3D sounding data is presented. Major phas...
We present a new low-complexity algorithm for hyperspectral image compression that uses linear predi...
This Aiming at improving the lossless compression ratio of hyperspectral image, a three-dimensional ...
Hyperspectral imaging (HSI) technology has been used for various remote sensing applications due to ...
Lossy compression of hyperspectral and ultraspectral images is traditionally performed using 3D tran...
This paper considers an approach to the compression of hyperspectral remote sensing data by an origi...
This paper presents a novel scheme for lossless/near-lossless hyperspectral image compression, that ...
Hyperspectral imaging is widely used in many applications; especially in vegetation, climate changes...
Hyperspectral image consist of a set of contiguous images bands collected by a hyperspectral sensor....