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On text-independent speaker recognition via improved Vector Quantization method

机译:基于改进矢量量化方法的文本无关说话人识别

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The text-independent speaker recognition system is mainly constituted of three functional modules including speech pretreatment, the feature parameter extraction, and pattern matching judgment. The paper uses the MATLAB software to acquire a design of the system. The feature parameters utilized in this paper are Mel-Frequency Cepstrum Coefficients (MFCC) and their first-order differential characteristics. With the help of the Fisher criterion the number of the dimension of the feature parameters is decreased. Vector Quantization (VQ) model is applied to devise the optimal codebook. The paper suggests some modifications in order to improve the efficiency of the algorithm on the basis of high recognition rate: Fisher ratio of each dimensional parameter is used as weighing coefficient at the distance measurement; an approach to speeding up the search is proposed; Process the empty cell in the procedure of codebook formation. In addition, it discusses a few factors including the training and testing time, the dimension of the codebook, stopping and acceptance thresholds, which have an impact on identification accuracy rate by experimentation.
机译:与文本无关的说话人识别系统主要由三个功能模块组成,包括语音预处理,特征参数提取和模式匹配判断。本文使用MATLAB软件来获取系统设计。本文使用的特征参数是梅尔频率倒谱系数(MFCC)及其一阶微分特性。借助Fisher准则,减少了特征参数的维数。应用矢量量化(VQ)模型来设计最佳码本。本文提出了一些改进措施,以在高识别率的基础上提高算法的效率:在距离测量时,将各个维度参数的Fisher比率用作加权系数;提出了一种加快搜索速度的方法;在代码本形成过程中处理空单元格。此外,它还讨论了一些因素,包括培训和测试时间,密码本的尺寸,停止和接受阈值,这些因素会通过实验影响识别准确率。

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