DocumentCode
245527
Title
Data compression via logic synthesis
Author
Amaru, Luca ; Gaillardon, Pierre-Emmanuel ; Burg, Andreas ; De Micheli, G.
Author_Institution
Integrated Syst. Lab. (LSI), EPFL, Lausanne, Switzerland
fYear
2014
fDate
20-23 Jan. 2014
Firstpage
628
Lastpage
633
Abstract
Nowadays, most software and hardware applications are committed to reduce the footprint and resource usage of data. In this general context, lossless data compression is a beneficial technique that encodes information using fewer (or at most equal number of) bits as compared to the original representation. A traditional compression flow consists of two phases: data decorrelation and entropy encoding. Data decorrelation, also called entropy reduction, aims at reducing the autocorrelation of the input data stream to be compressed in order to enhance the efficiency of entropy encoding. Entropy encoding reduces the size of the previously decorrelated data by using techniques such as Huffman coding, arithmetic coding, and others. When the data decorrelation is optimal, entropy encoding produces the strongest lossless compression possible. While efficient solutions for entropy encoding exist, data decorrelation is still a challenging problem limiting ultimate lossless compression opportunities. In this paper, we use logic synthesis to remove redundancy in binary data aiming to unlock the full potential of lossless compression. Embedded in a complete lossless compression flow, our logic synthesis based methodology is capable to identify the underlying function correlating a data set. Experimental results on data sets deriving from different causal processes show that the proposed approach achieves the highest compression ratio compared to state-of-art compression tools such as ZIP, bzip2 and 7zip.
Keywords
data compression; entropy codes; logic design; 7zip; Huffman coding; ZIP; arithmetic coding; bzip2; compression flow; data decorrelation; data resource usage reduction; decorrelated data size reduction; entropy encoding; entropy reduction; information encoding; input data stream autocorrelation reduction; logic synthesis; lossless compression flow; lossless compression opportunity; lossless data compression; software-hardware applications; Data compression; Decorrelation; Encoding; Entropy; Indexes; Logic circuits; Transforms;
fLanguage
English
Publisher
ieee
Conference_Titel
Design Automation Conference (ASP-DAC), 2014 19th Asia and South Pacific
Conference_Location
Singapore
Type
conf
DOI
10.1109/ASPDAC.2014.6742961
Filename
6742961
Link To Document