Aviso: por motivos de mantenimiento y mejora del repositorio, mañana martes día 13 de mayo, entre las 9 y las 14 horas, Docta Complutense, no funcionará con normalidad. Disculpen las molestias.
 

Hyperspectral Image Compression Using Vector Quantization, PCA and JPEG2000

Loading...
Thumbnail Image

Full text at PDC

Publication date

2018

Advisors (or tutors)

Editors

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI
Citations
Google Scholar

Citation

Abstract

Compression of hyperspectral imagery increases the efficiency of image storage and transmission. It is especially useful to alleviate congestion in the downlinks of planes and satellites, where these images are usually taken from. A novel compression algorithm is presented here. It first spectrally decorrelates the image using Vector Quantization and Principal Component Analysis (PCA), and then applies JPEG2000 to the Principal Components (PCs) exploiting spatial correlations for compression. We take advantage of the fact that dimensionality reduction preserves more information in the first components, allocating more depth to the first PCs. We optimize the selection of parameters by maximizing the distortion-ratio performance across the test images. An increase of 1 to 3 dB in Signal Noise Ratio (SNR) for the same compression ratio is found over just using PCA + JPEG2000, while also speeding up compression and decompression by more than 10%. A formula is proposed which determines the configuration of the algorithm, obtaining results that range from heavily compressed-low SNR images to low compressed-near lossless ones.

Research Projects

Organizational Units

Journal Issue

Description

Unesco subjects

Keywords

Collections