Air-borne and space-borne acquired hyperspectral images are used to recognize objects and to classify materials on the surface of the earth. The state of the art compressor for lossless compression of hyperspectral images is the Spectral oriented Least SQuares (SLSQ) compressor (see [1–7]). In this paper we discuss hyperspectral image compression: we show how to visualize each band of a hyperspectral image and how this visualization suggests that an appropriate band ordering can lead to improvements in the compression process. In particular, we consider two important distance measures for band ordering: Pearson’s Correlation and Bhattacharyya distance, and report on experimental results achieved by a Java-based implementation of SLSQ
Hyperspectral remote sensing produces a huge amount of three-dimensional digital data: t...
Many methods for lossy and lossless compression of multispectral imaging data has been developed. 3-...
Hyperspectral imaging has emerged as an image processing technique in many applications. The reason...
Air-borne and space-borne acquired hyperspectral images are used to recognize objects and to classif...
n this paper we focus on the compression of three-dimensional hyperspectral data, and review the sta...
Hyperspectral imaging is widely used in many applications; especially in vegetation, climate changes...
Band ordering and the prediction scheme are the two major aspects of hyperspectral imaging which hav...
Hyperspectral images can be efficiently compressed through a linear predictive model, as for example...
Abstract:- Hyperspectral imaging has been widely studied in many applications; notably in climate ch...
Abstract:- An efficient lossless compression algorithm for 3D sounding data is presented. Major phas...
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...
The possibilities of hierarchical compression in hyperspectral images repository are investigated. T...
Abstract:- A spectral linear prediction compression scheme for lossless compression of hyperspectral...
Hyperspectral imagery brings to remote sensing a whole new set of capabilities. Common images are re...
Hyperspectral remote sensing produces a huge amount of three-dimensional digital data: t...
Many methods for lossy and lossless compression of multispectral imaging data has been developed. 3-...
Hyperspectral imaging has emerged as an image processing technique in many applications. The reason...
Air-borne and space-borne acquired hyperspectral images are used to recognize objects and to classif...
n this paper we focus on the compression of three-dimensional hyperspectral data, and review the sta...
Hyperspectral imaging is widely used in many applications; especially in vegetation, climate changes...
Band ordering and the prediction scheme are the two major aspects of hyperspectral imaging which hav...
Hyperspectral images can be efficiently compressed through a linear predictive model, as for example...
Abstract:- Hyperspectral imaging has been widely studied in many applications; notably in climate ch...
Abstract:- An efficient lossless compression algorithm for 3D sounding data is presented. Major phas...
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...
The possibilities of hierarchical compression in hyperspectral images repository are investigated. T...
Abstract:- A spectral linear prediction compression scheme for lossless compression of hyperspectral...
Hyperspectral imagery brings to remote sensing a whole new set of capabilities. Common images are re...
Hyperspectral remote sensing produces a huge amount of three-dimensional digital data: t...
Many methods for lossy and lossless compression of multispectral imaging data has been developed. 3-...
Hyperspectral imaging has emerged as an image processing technique in many applications. The reason...