DocumentCode
3266145
Title
Vector quantizer design using genetic algorithms
Author
Choi, Sunghyun ; Ng, Wee-Keong
Author_Institution
Dept. of Electr. Eng. & Comput. Sci., Michigan Univ., Ann Arbor, MI, USA
fYear
1996
fDate
Mar/Apr 1996
Firstpage
430
Abstract
The design of vector quantizers (VQs) that yield minimal distortion is one of the most challenging problems in source coding. The problem of VQ design is to find a codebook that gives the least overall distortion (or equivalently, the largest signal-to-noise ratio (SNR)) for a given set of input vectors. This problem is known to be difficult as there are no known closed-form solutions. The generalized Lloyd algorithm (GLA) uses a finite set of training sequences as the data source and employs an iterative refinement. Given an initial codebook, the algorithm computes the nearest focally optimum codebook only. Genetic algorithms (GAs) are emerging as widely accepted optimization and search methods. These search methods are rooted in the mechanisms of evolution and natural genetics. They have a high probability of locating the globally optimal solution in a multimodal search space. A genetic algorithmic (GA) approach to vector quantizer design that combines the GLA is presented. We refer to this hybrid as the genetic generalized Lloyd algorithm (GGLA). It works briefly as follows. Initially, a finite number of codebooks, called chromosomes, are selected. In contrast to the GLA which refines only one codebook at a time, those codebooks undergo iterative cycles of reproduction in parallel. During an iteration, each codebook is updated by GLA or GA operations (i.e., mutation, crossover, and chromosome replacement). Three versions of the GGLAs are investigated depending on how the GLA or GA is selected
Keywords
genetic algorithms; iterative methods; search problems; source coding; vector quantisation; SNR; chromosome replacement; chromosomes; codebook; crossover; data source; generalized Lloyd algorithm; genetic algorithms; genetic generalized Lloyd algorithm; globally optimal solution; iterative refinement; minimal distortion; multimodal search space; mutation; optimization; search methods; signal to noise ratio; source coding; training sequences; vector quantizer design; Algorithm design and analysis; Biological cells; Closed-form solution; Distortion; Genetic algorithms; Iterative algorithms; Search methods; Signal design; Signal to noise ratio; Source coding;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Compression Conference, 1996. DCC '96. Proceedings
Conference_Location
Snowbird, UT
ISSN
1068-0314
Print_ISBN
0-8186-7358-3
Type
conf
DOI
10.1109/DCC.1996.488358
Filename
488358
Link To Document