首页> 外文会议>IEEE global telecommunications conference;Globecom'95 >APPLICATION OF SORTED CODEBOOK VECTOR QUANTIZATION TO SPECTRAL CODING OF SPEECH
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APPLICATION OF SORTED CODEBOOK VECTOR QUANTIZATION TO SPECTRAL CODING OF SPEECH

机译:编码书矢量量化在语音谱编码中的应用

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A new vector quantization method, namely Sorted Codebook Vector Quantization (SCVQ) is presented in this article. The paper explains the principles of this method, including training and optimization of the associated codebook. It is shown that this quantizer can be implemented efficiently with almost similar computational complexity to tree-searched vector quantization (TSVQ) and the storage cost of that is the same as unstructured VQ (i.e. less than TSVQ). Application of SCVQ to quantization of Line Spectral Frequencies (LSFs), which are the most popular parameters for spectrum quantization in speech coders using linear prediction model, is described. Superior performance of the new method is verified through experimental simulations.
机译:本文提出了一种新的矢量量化方法,即有序码本矢量量化(SCVQ)。论文解释了这种方法的原理,包括相关码本的训练和优化。已经表明,该量化器可以以与树搜索的矢量量化(TSVQ)几乎相似的计算复杂度来有效地实现,并且其存储成本与非结构化VQ相同(即小于TSVQ)。描述了SCVQ在线谱频率(LSF)量化中的应用,线谱频率是使用线性预测模型在语音编码器中进行频谱量化的最流行参数。通过实验仿真证明了该新方法的优越性能。

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