DocumentCode
1507685
Title
GPU Acceleration of Predictive Partitioned Vector Quantization for Ultraspectral Sounder Data Compression
Author
Wei, Shih-Chieh ; Huang, Bormin
Author_Institution
Space Sci. & Eng. Center, Univ. of Wisconsin-Madison, Madison, WI, USA
Volume
4
Issue
3
fYear
2011
Firstpage
677
Lastpage
682
Abstract
For the large-volume ultraspectral sounder data, compression is desirable to save storage space and transmission time. To retrieve the geophysical paramters without losing precision the ultraspectral sounder data compression has to be lossless. Recently there is a boom on the use of graphic processor units (GPU) for speedup of scientific computations. By identifying the time dominant portions of the code that can be executed in parallel, significant speedup can be achieved by using GPU. Predictive partitioned vector quantization (PPVQ) has been proven to be an effective lossless compression scheme for ultraspectral sounder data. It consists of linear prediction, bit depth partitioning, vector quantization, and entropy coding. Two most time consuming stages of linear prediction and vector quantization are chosen for GPU-based implementation. By exploiting the data parallel characteristics of these two stages, a spatial division design shows a speedup of 72x in our four-GPU-based implementation of the PPVQ compression scheme.
Keywords
computer graphics; coprocessors; entropy codes; geophysical signal processing; vector quantisation; GPU acceleration; PPVQ compression scheme; bit depth partitioning; data parallel characteristics; entropy coding; graphic processor unit; linear prediction; predictive partitioned vector quantization; spatial division design; storage space; time dominant portion; transmission time; ultraspectral sounder data compression; Graphics processing unit; Instruction sets; Kernel; Pixel; Training; Vector quantization; Vectors; Graphic processor unit; lossless data compression; predictive partitioned vector quantization; ultraspectral sounder data;
fLanguage
English
Journal_Title
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
Publisher
ieee
ISSN
1939-1404
Type
jour
DOI
10.1109/JSTARS.2011.2132117
Filename
5759724
Link To Document