自适应量化无侧信息使用标量矢量量化和网格编码量化

Y. Yoo, Antonio Ortega
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引用次数: 4

摘要

我们将后向自适应量化与标量矢量量化器(SVQ)和网格编码量化器(TCQ)相结合,这两种量化器在其结构中都有一个底层标量量化器(USQ)。由此产生的自适应标量矢量量化器(ASVQ)和自适应网格编码量化器(ATCQ)在过去量化输出的基础上重新设计了USQ。当输入信号是非平稳时,自适应量化器不需要侧信息,并且分别优于SVQ和TCQ。对于来自双峰源的输入序列,在具有相同均值和不同方差的两个高斯分布之间不频繁切换,两种自适应量化器都比基于来自同一双峰源的训练集设计的非自适应量化器获得了超过1.3 dB的性能增益。此外,当考虑平稳输入时,自适应量化器表现出最小的性能下降。
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 without side information using scalar-vector quantization and trellis coded quantization
We combine backward adaptive quantization with the scalar-vector quantizer (SVQ) and the trellis coded quantizer (TCQ) both of which have an underlying scalar quantizer (USQ) in their structure. The resulting adaptive scalar-vector quantizer (ASVQ) and adaptive trellis coded quantizer (ATCQ) redesign the USQ based on the past quantized outputs. The adaptive quantizers require no side information and also outperform the SVQ and the TCQ, respectively, when the input signal is non-stationary. For an input sequence from a bimodal source switching infrequently between two Gaussian distributions with the same mean and different variances, both adaptive quantizers achieve performance gains of more than 1.3 dB over the non-adaptive quantizers designed on the training set from the same bimodal source. Also the adaptive quantizers demonstrate minimal performance degradation due to adaptation when stationary inputs are considered.
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