过采样滤波器组的多步最优量化

D. Quevedo, G. Goodwin, H. Bölcskei
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引用次数: 7

摘要

利用后退水平控制框架的概念,我们提出了一种过采样滤波器组的量化方法。关键思想是将量化问题作为一个多步优化问题,其中决策变量被限制为属于有限集合。结果表明,与众所周知的噪声整形编码器相比,所得到的架构产生了更高的性能。特别是,所提出的量化器可以在考虑稳定性概念的情况下进行调谐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-step optimal quantization in oversampled filter banks
Using concepts from the receding horizon control framework, we propose an approach to quantization in oversampled filter banks. The key idea is to pose the quantization problem as a multi-step optimization problem, where the decision variables are restricted to belong to a finite set. It is shown that the resulting architecture yields enhanced performance when compared to the well-known noise shaping coder. In particular, the quantizer proposed can be tuned with stability concepts in mind.
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