DocumentCode
1209322
Title
Block Quantization of Correlated Gaussian Random Variables
Author
Huang, J. J Y ; Schultheiss, P.M.
Author_Institution
San Jose State College, San Jose, CA
Volume
11
Issue
3
fYear
1963
fDate
9/1/1963 12:00:00 AM
Firstpage
289
Lastpage
296
Abstract
The paper analyzes a procedure for quantizing blocks of
correlated Gaussian random variables. A linear transformation
first converts the
dependent random variables into
independent random variables. These are then quantized, one at a time, in optimal fashion. The output of each quantizer is transmitted by a binary code. The total number of binary digits available for the block of
symbols is fixed. Finally, a second
linear transformation
constructs from the quantized values the best estimate (in a mean-square sense) of the original variables. It is shown that the best choice of
is
, regardless of other considerations. If
, the best choice for
is the transpose of the orthogonal matrix wich diagonalizes the moment matrix of the original (correlated) random variables. An approximate expression is obtained for the manner in which the available binary digits should be assigned to the
quantized variables, i.e., the manner in which the number of levels for each quantizer should be chosen. The final selection of the optimal set of quantizers then becomes a matter of a few simple trials. A number of examples are worked out and substantial improvements over single sample quantizing are attained with blocks of relatively short length.
correlated Gaussian random variables. A linear transformation
first converts the
dependent random variables into
independent random variables. These are then quantized, one at a time, in optimal fashion. The output of each quantizer is transmitted by a binary code. The total number of binary digits available for the block of
symbols is fixed. Finally, a second
linear transformation
constructs from the quantized values the best estimate (in a mean-square sense) of the original variables. It is shown that the best choice of
is
, regardless of other considerations. If
, the best choice for
is the transpose of the orthogonal matrix wich diagonalizes the moment matrix of the original (correlated) random variables. An approximate expression is obtained for the manner in which the available binary digits should be assigned to the
quantized variables, i.e., the manner in which the number of levels for each quantizer should be chosen. The final selection of the optimal set of quantizers then becomes a matter of a few simple trials. A number of examples are worked out and substantial improvements over single sample quantizing are attained with blocks of relatively short length.Keywords
Binary codes; Educational institutions; Gaussian distribution; Instruments; Multidimensional systems; Noise generators; Probability; Quantization; Random variables; Sampling methods;
fLanguage
English
Journal_Title
Communications Systems, IEEE Transactions on
Publisher
ieee
ISSN
0096-1965
Type
jour
DOI
10.1109/TCOM.1963.1088759
Filename
1088759
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