DocumentCode :
829903
Title :
Do optimal entropy-constrained quantizers have a finite or infinite number of codewords?
Author :
György, András ; Linder, Tamás ; Chou, Philip A. ; Betts, Bradley J.
Author_Institution :
Dept. of Math. & Stat., Queen´´s Univ., Kingston, Ont., Canada
Volume :
49
Issue :
11
fYear :
2003
Firstpage :
3031
Lastpage :
3037
Abstract :
An entropy-constrained quantizer Q is optimal if it minimizes the expected distortion D(Q) subject to a constraint on the output entropy H(Q). We use the Lagrangian formulation to show the existence and study the structure of optimal entropy-constrained quantizers that achieve a point on the lower convex hull of the operational distortion-rate function Dh(R) = infQ{D(Q) : H(Q) ≤ R}. In general, an optimal entropy-constrained quantizer may have a countably infinite number of codewords. Our main results show that if the tail of the source distribution is sufficiently light (resp., heavy) with respect to the distortion measure, the Lagrangian-optimal entropy-constrained quantizer has a finite (resp., infinite) number of codewords. In particular, for the squared error distortion measure, if the tail of the source distribution is lighter than the tail of a Gaussian distribution, then the Lagrangian-optimal quantizer has only a finite number of codewords, while if the tail is heavier than that of the Gaussian, the Lagrangian-optimal quantizer has an infinite number of codewords.
Keywords :
Gaussian distribution; distortion; entropy codes; minimisation; vector quantisation; Gaussian distribution; Lagrangian formulation; codewords; distortion minimization; entropy coding; entropy-constrained vector quantizers; lower convex hull; operational distortion-rate function; optimal entropy-constrained quantizers; source distribution tail; squared error distortion measure; Associate members; Distortion measurement; Entropy; Information theory; Lagrangian functions; Mathematics; Probability distribution; Quantization; Source coding; Statistics;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2003.819340
Filename :
1246029
Link To Document :
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