Publication
Title
Compression and noise reduction of hyperspectral images using non-negative tensor decomposition and compressed sensing
Author
Abstract
Hyperspectral images ( HSI) are usually volumetric and require alot of space and time for archiving and transmitting. In this research, a new lossy compression method for HSI is introduced based on non-negative Tucker decomposition ( NTD). This method consider HSI as a 3D dataset: two spatial dimensions and one spectral dimension. The NTD algorithm decomposes the original data into a smaller 3D dataset ( core tensor) and three matrices. In the proposed method, the Block Coordinate Descent ( BCD) method is used to find the optimal decomposition, which is initialized by using Compressed Sensing ( CS). The obtained optimal core tensor and matrices are coded by applying arithmetic coding and finally the compressed dataset is transmitted. The proposed method is applied to the real dataset, simulation results show that in comparison with well-known lossy compression methods such as 3D SPECK and PCA+JPEG2000, the proposed method achieves the highest signal to noise ratio ( SNR) at any desired compression ratio ( CR) while noise reduction is simultaneously acquired.
Language
English
Source (journal)
European Journal of Remote Sensing
Publication
2016
ISSN
2279-7254
DOI
10.5721/EUJRS20164931
Volume/pages
49 (2016) , p. 587-598
ISI
000385998900008
Full text (Publisher's DOI)
UAntwerpen
Faculty/Department
Research group
Publication type
Subject
Affiliation
Publications with a UAntwerp address
External links
Web of Science
Record
Identifier
Creation 02.12.2016
Last edited 09.10.2023
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