Gaussian Mixture Model Based Switched Split Vector Quantization of LSF Parameters

Saikat Chatterjee, T. Sreenivas
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引用次数: 7

Abstract

We address the issue of rate-distortion (R/D) performance optimality of the recently proposed switched split vector quantization (SSVQ) method. The distribution of the source is modeled using Gaussian mixture density and thus, the non-parametric SSVQ is analyzed in a parametric model based framework for achieving optimum R/D performance. Using high rate quantization theory, we derive the optimum bit allocation formulae for the intra-cluster split vector quantizer (SVQ) and the inter-cluster switching. For the wide-band speech line spectrum frequency (LSF) parameter quantization, it is shown that the Gaussian mixture model (GMM) based parametric SSVQ method provides 1 bit/vector advantage over the non-parametric SSVQ method.
基于高斯混合模型的LSF参数的开关分裂矢量量化
我们解决了最近提出的切换分裂矢量量化(SSVQ)方法的率失真(R/D)性能最优性问题。源的分布采用高斯混合密度建模,因此,在基于参数模型的框架中分析非参数SSVQ,以实现最佳的R/D性能。利用高速率量化理论,推导了簇内分割矢量量化器(SVQ)和簇间交换的最佳比特分配公式。对于宽带语音线谱频率(LSF)参数量化,基于高斯混合模型(GMM)的参数SSVQ方法比非参数SSVQ方法具有1 bit/vector的优势。
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