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语音清浊音差分LSF参数矢量量化方法
引用本文:方腾龙,赵晓群,韩笑蕾,顾杰.语音清浊音差分LSF参数矢量量化方法[J].电声技术,2010,34(11):61-64,71.
作者姓名:方腾龙  赵晓群  韩笑蕾  顾杰
作者单位:同济大学,电子与信息工程学院,上海,201804
摘    要:差分LSF参数的动态范围小于LSF参数,可作为一种新的模型参数应用于语音编码中。分析了2种新的差分LSF参数矢量量化方法:增强差分分裂参数矢量量化(EnhancedDifferentialSplitVectorQuantization,EDSVQ)和增强EDSVQ(EnhancedEDSVQ,EEDSVQ),并采用英语清、浊音的差分LSF参数进行分裂矢量量化实验。结果表明,EEDSVQ能有效抑制直接对差分LSF参数进行矢量量化引起的量化误差传递和叠加;在分配相同量化比特数的情况下.清音的量化效果优于浊音.为获得相同量化效果可减少对清音的量化比特数。

关 键 词:LSF参数  差分LSF参数  误差传递  语音编码

Differential LSF Vector Quantization Method Based on Speech Unvoiced/voiced Classification
FANG Tenglong,ZHAO Xiaoqun,HAN Xiaolei,GU Jie.Differential LSF Vector Quantization Method Based on Speech Unvoiced/voiced Classification[J].Audio Engineering,2010,34(11):61-64,71.
Authors:FANG Tenglong  ZHAO Xiaoqun  HAN Xiaolei  GU Jie
Affiliation:FANG Tenglong,ZHAO Xiaoqun,HAN Xiaolei,GU Jie(School of Electronics and Information,Tongji University,Shanghai 201804,China)
Abstract:Differential line spectrum frequency(LSF) parameters have less dynamic range than LSF parameters,so differential LSF can be used as new model parameters in speech coding.Two new differential LSF vector quan-tization method EDSVQ and EEDSVQ are analyzed in this paper,and split vector quantization is simulated using differential LSF parameters from English unvoiced/voiced speech database.Experimental results show that EEDSVQ can suppress the quantization error propagation caused by directly vector quantizatio...
Keywords:LSF  differential LSF  error delivery  speech coding  
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