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首页> 外文期刊>Audio, Speech, and Language Processing, IEEE/ACM Transactions on >A Novel Hierarchical Decomposition Vector Quantization Method for High-Order LPC Parameters
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A Novel Hierarchical Decomposition Vector Quantization Method for High-Order LPC Parameters

机译:高阶LPC参数的一种新的分层分解矢量量化方法

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摘要

The paper investigates vector quantization coding of high-order (e.g., 20th-50th order) linear prediction coding (LPC) parameters, and proposes a novel hierarchical decomposition vector quantization method for a scalable speech coding framework with variable orders of LPC analysis. Instead of vector quantizing the whole group of LPC parameters in the linear spectral frequency (LSF) domain directly, the proposed method decomposes the high-order LPC model into several low-order (e.g., 10th-order) LPC models, and vector quantizes them in the LSF domain separately. For the decomposition, the high-order LPC model is converted into a group of reflection coefficients at first, and then the group is split into several subgroups and converted into multiple low-order LPC models. It is shown that the proposed method is naturally suitable for a scalable coding framework where the information of the decomposed low-order LPC models can be encoded into a multi-layered bitstream and can be combined in a progressive way to recover the high-order LPC information. Experiments in a scalable coding framework with variable LPC analysis orders (10-50) reveal that, compared to a direct vector quantization scheme, the proposed method can reduce the size of the codebook and the number of coding bits significantly, and can also efficiently reduce the computation cost.
机译:本文研究了高阶(例如20至50阶)线性预测编码(LPC)参数的矢量量化编码,并提出了一种新的用于LPC分析可变阶的可扩展语音编码框架的分层分解矢量量化方法。所提出的方法不是直接对线性频谱频率(LSF)域中的整个LPC参数进行矢量量化,而是将高阶LPC模型分解为几个低阶(例如10阶)LPC模型,并对它们进行矢量量化。在LSF域中。为了进行分解,首先将高阶LPC模型转换为一组反射系数,然后将该组分解为几个子组,然后转换为多个低阶LPC模型。结果表明,所提出的方法自然适用于可扩展的编码框架,在该框架中,分解后的低阶LPC模型的信息可以被编码为多层比特流,并且可以以渐进方式进行组合以恢复高阶LPC。信息。在具有可变LPC分析阶数(10-50)的可伸缩编码框架中进行的实验表明,与直接矢量量化方案相比,该方法可以显着减少码本的大小和编码位数,并且还可以有效地减少计算成本。

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