Title :
Sequential scalar quantization of vectors: an analysis
Author :
Balasubramanian, Raja ; Bouman, Charles A. ; Allebach, Jan P.
Author_Institution :
Xerox Webster Res. Center, NY, USA
fDate :
9/1/1995 12:00:00 AM
Abstract :
Proposes an efficient vector quantization (VQ) technique called sequential scalar quantization (SSQ). The scalar components of the vector are individually quantized in a sequence, with the quantization of each component utilizing conditional information from the quantization of previous components. Unlike conventional independent scalar quantization (ISQ), SSQ has the ability to exploit intercomponent correlation. At the same time, since quantization is performed on scalar rather than vector variables, SSQ offers a significant computational advantage over conventional VQ techniques and is easily amenable to a hardware implementation. In order to analyze the performance of SSQ, the authors appeal to asymptotic quantization theory, where the codebook size is assumed to be large. Closed-form expressions are derived for the quantizer mean squared error (MSE). These expressions are used to compare the asymptotic performance of SSQ with other VQ techniques. The authors also demonstrate the use of asymptotic theory in designing SSQ for a practical application (color image quantization), where the codebook size is typically small. Theoretical and experimental results show that SSQ far outperforms ISQ with respect to MSE while offering a considerable reduction in computation over conventional VQ at the expense of a moderate increase in MSE
Keywords :
correlation methods; image coding; image colour analysis; sequences; vector quantisation; asymptotic performance; asymptotic quantization theory; closed-form expressions; codebook size; color image quantization; computation; intercomponent correlation; performance; quantizer mean squared error; scalar components; sequential scalar quantization; vector quantization; Color; Data compression; Distortion measurement; Hardware; Iterative algorithms; Performance analysis; Product codes; Rate distortion theory; Speech coding; Vector quantization;
Journal_Title :
Image Processing, IEEE Transactions on