DocumentCode
960104
Title
Lagrangian Optimization of Two-Description Scalar Quantizers
Author
Dumitrescu, Sorina ; Wu, Xiaolin
Author_Institution
McMaster Univ., Hamilton
Volume
53
Issue
11
fYear
2007
Firstpage
3990
Lastpage
4012
Abstract
In this paper, we study the problem of optimal design of balanced two-description fixed-rate scalar quantizer (2DSQ) under the constraint of convex codecells. Using a graph-based approach to model the problem, we show that the minimum expected distortion of the 2DSQ is a convex function of the number of codecells in the side quantizers. This property allows the problem to be solved by Lagrangian minimization for which the optimal Lagrangian multiplier exists. Given a trial multiplier, we exploit a monotonicity of the objective function, and develop a simple and fast dynamic programming technique to solve the parameterized problem. To further improve the algorithm efficiency, we propose an RD-guided search strategy to find the optimal Lagrangian multiplier. In our experiments on distributions of interest for signal compression applications the proposed algorithm improves the speed of the fastest algorithm so far, by a factor of O(K/logK), where K is the number of codecells in each side quantizer. We also assess the impact on the optimality of the convex codecell constraint. Using a published performance analysis of 2DSQ at high rates, we show that asymptotically this constraint does not preclude optimality for L 2 distortion measure, when channels have a higher than 0.12 loss rate.
Keywords
dynamic programming; graph theory; quantisation (signal); Lagrangian optimization; convex function; dynamic programming technique; graph-based approach; signal compression; two-description scalar quantizer; Algorithm design and analysis; Distortion measurement; Dynamic programming; Information theory; Lagrangian functions; Loss measurement; Performance analysis; Quantization; Source coding; Streaming media; Convexity of quantizer cells; Lagrangian optimization; distributed source coding; minimum-weight $k$ -edge path; multiple description quantization (MDQ);
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2007.907498
Filename
4373398
Link To Document