Title :
Joint bit allocation and dimensions optimization for vector transform quantization
Author :
Cuperman, Vladimir
Author_Institution :
Sch. of Eng. Sci., Simon Fraser Univ., Burnaby, BC, Canada
fDate :
1/1/1993 12:00:00 AM
Abstract :
In vector transform quantization (VTQ), vectors consisting of M consecutive samples of a waveform are transformed into a set of M coefficients that are quantized by m≪M vector quantizers. The bit allocation problem in the transform domain is considered for a memoryless stationary vector source encoded by a VTQ system. It is assumed that the vector quantizer parameters (dimension, codebook size) are subject to a complexity constraint. The vector quantization lower bound on the attainable distortion at a given (high) rate is used for deriving the bit allocation algorithm for given vector dimensions. Then, the joint optimization of vector dimensions and bit allocations is considered. Given a complexity constraint, the optimal dimensions depend on the bit allocation, which, in turn, depends on the dimensions. An iterative algorithm is proposed for solving this problem
Keywords :
encoding; iterative methods; optimisation; transforms; vector quantisation; VTQ; attainable distortion; bit allocation problem; coding theory; complexity constraint; iterative algorithm; joint optimization; lower bound; memoryless stationary vector source; transform domain; vector dimensions; vector transform quantization; Bit rate; Cities and towns; Councils; Design optimization; Information processing; Information theory; Iterative algorithms; Source coding; Transform coding; Vector quantization;
Journal_Title :
Information Theory, IEEE Transactions on