矢量的最优顺序标量量化

J. Z. Chang, J. Allebach
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引用次数: 6

摘要

Balasubramanian等(1993)提出了一种高效的矢量量化方法,称为顺序标量量化(sequential scalar quantization, SSQ)。在该方法中,矢量的标量分量按顺序单独量化,每个分量的量化利用来自前分量量化的条件信息。研究表明,SSQ比传统的独立标量量化性能要好得多,同时比传统的VQ技术具有显著的计算优势。然而,设计技术是一种贪婪的方法。本文利用渐近量化理论推导了SSQ的全局最优设计过程。在此方法中,标量的量子化不仅取决于先前量子化标量的边际密度,还取决于未量子化标量的分布。他们还提供了仿真结果来说明这两种设计方法在适当数量的量化水平下的相对性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal sequential scalar quantization of vectors
Balasubramanian et al. (1993) proposed an efficient vector quantization method called sequential scalar quantization (SSQ). In this method, 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. It has been shown that SSQ performs far better than conventional independent scalar quantization, while offering significant computational advantage over conventional VQ techniques. However, the design technique was a greedy method. The present authors use asymptotic quantization theory to derive a globally optimal design procedure for SSQ. With this method, the quantization of a scalar depends not only on its marginal density conditioned on the previously quantized scalars, but also on the distribution of the unquantized scalars. They also present simulation results to illustrate the relative performance of these two design methods with a moderate number of quantization levels.<>
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