仅在接收端使用自适应码本改进相关过程的标量量化

Sai Han, T. Fingscheidt
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引用次数: 4

摘要

Lloyd-Max量化(LMQ)是一种广泛应用的标量非均匀量化方法,其目标是最小均方误差(MMSE)。一旦设计好,量化码本就会随着时间的推移而固定,并且不会利用输入信号中可能存在的相关性。利用标量量化中的相关性可以通过预测量化来实现,但代价是更高的误码灵敏度。为了提高Lloyd-Max量化器在无编码器侧预测的相关过程中的性能,提出了一种利用输入信号相关性的标量解码方法。基于先前接收到的样本,可以先验地预测当前样本。然后,根据预测误差概率密度函数生成随时间变化的量化码本。与标准LMQ相比,我们的接收机在无错误和易出错的传输条件下,无论是硬判决解码还是软判决解码,都取得了明显的改进。
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Improving scalar quantization for correlated processes using adaptive codebooks only at the receiver
Lloyd-Max quantization (LMQ) is a widely used scalar non-uniform quantization approach targeting for the minimum mean squared error (MMSE). Once designed, the quantizer codebook is fixed over time and does not take advantage of possible correlations in the input signals. Exploiting correlation in scalar quantization could be achieved by predictive quantization, however, for the price of a higher bit error sensitivity. In order to improve the Lloyd-Max quantizer performance for correlated processes without encoder-sided prediction, a novel scalar decoding approach utilizing the correlation of input signals is proposed in this paper. Based on previously received samples, the current sample can be predicted a priori. Thereafter, a quantization codebook adapted over time will be generated according to the prediction error probability density function. Compared to the standard LMQ, distinct improvement is achieved with our receiver in error-free and error-prone transmission conditions, both with hard-decision and soft-decision decoding.
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