自适应量化与一个字的记忆

N. Jayant
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引用次数: 218

摘要

我们讨论了一种量化器,对于每一个新的输入样本,它通过一个因子来适应它的步长,这只取决于之前的信号样本占用了哪个量化器槽的知识具体来说,如果均匀B位量化器(B > 1)的输出具有步长Δ r的形式,则步长r由先前的步长乘以码字幅度的时不变函数给出:适应性是由输入信号方差未知的假设引起的,因此量化器通常以次优步长Δ START开始。通常,使信噪比(SNR)最大化的乘法器函数取决于Δ START和输入序列长度N。例如,如果信号是平稳的,并且N→∞最佳乘法器,无论Δ START如何,其值都任意接近于1。另一方面,较小的N值和Δ START的次优值使得M值远离统一。通过在广义信噪比定义中包含足够范围的N和Δ START值,我们展示了如何确定对给定信号最优的稳定乘法器函数M OPT。在具有一阶高斯-马尔可夫输入的2位和3位量化器的计算机模拟中,我们注意到,除非相邻样本之间的相关性C的幅度非常高,否则M OPT具有要求步长快速增加和缓慢减少的特性。我们从理论上推导出两种简单情况下的最优乘数:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive quantization with a one-word memory
We discuss a quantizer which, for every new input sample, adapts its step-size by a factor depending only on the knowledge of which quantizer slot was occupied by the previous signal sample.1 Specifically, if the outputs of a uniform B-bit quantizer (B > 1) are of the form the step-size Δ r , is given by the previous step-size multiplied by a time-invariant function of the code-word magnitude: The adaptations are motivated by the assumption that the input signal variance is unknown, so that the quantizer is started off, in general, with a suboptimal step-size Δ START . Multiplier functions that maximize the signal-to-quantization-error ratio (SNR) depend, in general, on Δ START and the input sequence length N. For example, if the signal is stationary and N → ∞ best multipliers, irrespective of Δ START , have values arbitrarily close to unity. On the other hand, small values of N and suboptimal values of Δ START necessitate M values further away from unity. By including an adequate range of values for N and Δ START in a generalized SNR definition, we show how one can determine stable multiplier functions M OPT that are optimal for a given signal. In computer simulations of 2- and 3-bit quantizers with first-order Gauss-Markovian inputs, we note that, except when the magnitude of the correlation C between adjacent samples is very high, M OPT has the property of calling for fast increases and slow decreases of step-size. We derive optimum multipliers theoretically for two simple cases:
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