DocumentCode
1779535
Title
Integer-Forcing source coding
Author
Ordentlich, Or ; Erez, Uri
Author_Institution
Dept. EE-Syst., Tel Aviv Univ., Tel Aviv, Israel
fYear
2014
fDate
June 29 2014-July 4 2014
Firstpage
181
Lastpage
185
Abstract
Integer-Forcing (IF) is a new framework, based on compute-and-forward, for decoding multiple integer linear combinations from the output of a Gaussian multiple-input multiple-output channel. This work develops the source coding dual of the IF approach to arrive at a new low-complexity scheme, IF source coding, for distributed lossy compression of correlated Gaussian sources under a minimum mean squared error distortion measure. All encoders use the same nested lattice codebook. Each encoder quantizes its observation using the fine lattice as a quantizer and reduces the result modulo the coarse lattice, which plays the role of binning. Rather than directly recovering the individual quantized signals, the decoder first recovers a full-rank set of judiciously chosen integer linear combinations of the quantized signals, and then inverts it. In general, the linear combinations have smaller average powers than the original signals. This allows to increase the density of the coarse lattice, which in turn translates to lower compression rates. We also propose and analyze a one-shot version of IF source coding, that is simple enough to potentially lead to a new design principle for analog-to-digital converters that can exploit spatial correlations between the sampled signals.
Keywords
Gaussian channels; MIMO communication; least mean squares methods; quantisation (signal); signal sampling; source coding; Gaussian multiple-input multiple-output channel; Gaussian sources; IF source coding; analog-to-digital converters; coarse lattice; compression rates; compute-and-forward; distributed lossy compression; fine lattice; integer-forcing source coding; lattice codebook; minimum mean squared error distortion measure; multiple integer linear combinations; quantized signals; spatial correlations; Decoding; Lattices; Quantization (signal); Rate-distortion; Source coding; Vectors;
fLanguage
English
Publisher
ieee
Conference_Titel
Information Theory (ISIT), 2014 IEEE International Symposium on
Conference_Location
Honolulu, HI
Type
conf
DOI
10.1109/ISIT.2014.6874819
Filename
6874819
Link To Document