Title :
Adaptive scalar quantization without side information
Author :
Ortega, Antonio ; Vetterli, Martin
Author_Institution :
Dept. of Electr. Eng. Syst., Univ. of Southern California, Los Angeles, CA, USA
fDate :
5/1/1997 12:00:00 AM
Abstract :
In this paper, we introduce a novel technique for adaptive scalar quantization. Adaptivity is useful in applications, including image compression, where the statistics of the source are either not known a priori or will change over time. Our algorithm uses previously quantized samples to estimate the distribution of the source, and does not require that side information be sent in order to adapt to changing source statistics. Our quantization scheme is thus backward adaptive. We propose that an adaptive quantizer can be separated into two building blocks, namely, model estimation and quantizer design. The model estimation produces an estimate of the changing source probability density function, which is then used to redesign the quantizer using standard techniques. We introduce nonparametric estimation techniques that only assume smoothness of the input distribution. We discuss the various sources of error in our estimation and argue that, for a wide class of sources with a smooth probability density function (pdf), we provide a good approximation to a “universal” quantizer, with the approximation becoming better as the rate increases. We study the performance of our scheme and show how the loss due to adaptivity is minimal in typical scenarios. In particular, we provide examples and show how our technique can achieve signal-to-noise ratios within 0.05 dB of the optimal Lloyd-Max quantizer for a memoryless source, while achieving over 1.5 dB gain over a fixed quantizer for a bimodal source
Keywords :
adaptive codes; error analysis; estimation theory; memoryless systems; nonparametric statistics; probability; source coding; adaptive scalar quantization; bimodal source; changing source probability density function; error; fixed quantizer; image compression; input distribution; memoryless source; model estimation; nonparametric estimation techniques; optimal Lloyd-Max quantizer; quantizer design; side information; signal-to-noise ratio; smoothness; source statistics; universal quantizer; Data compression; Estimation error; Gain; Huffman coding; Image coding; Performance loss; Probability density function; Pulse modulation; Quantization; Statistical distributions;
Journal_Title :
Image Processing, IEEE Transactions on