Language Specific Information from LP Residual Signal Using Linear Sub Band Filters

Soma Siddhartha, Jagabandhu Mishra, S. Prasanna
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引用次数: 3

Abstract

In this work, an analysis and comparison of the parameterization methods of excitation source information is demonstrated for the spoken language recognition task. The excitation source information is represented by the features called residual mel frequency cepstral coefficients (RMFCC) and residual linear frequency cepstral coefficients (RLFCC), both derived from the linear prediction residual signal. In general, inspired from the speaker recognition task, perceptually inspired mel-sub band filters are used for the parameterization of LP residual signal (known as RMFCC). In this study, as the LP residual signal is impulsive in nature (i.e. having a flat spectrum) a uniform triangular sub-band filter based parameterization method, called as RLFCC is proposed. From the experimental results, it has been observed that the RLFCC features perform better than RMFCC features. The RLFCC features combined with the MFCC features provide a relative improvement of 20% in terms of EERavg over the combined system of MFCC and RMFCC features using DNN-WA architecture.
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语言特定信息从LP残余信号使用线性子带滤波器
本文对口语识别任务中激励源信息的参数化方法进行了分析和比较。激励源信息由残差模频倒谱系数(RMFCC)和残差线性频倒谱系数(RLFCC)特征表示,二者均来源于线性预测残差信号。一般来说,受说话人识别任务的启发,感知启发的mel-sub - band滤波器用于低频残留信号的参数化(称为RMFCC)。本研究针对LP残留信号具有脉冲性质(即频谱平坦),提出了一种基于均匀三角形子带滤波器的参数化方法RLFCC。实验结果表明,RLFCC特征性能优于RMFCC特征。与使用DNN-WA架构的MFCC和RMFCC特征相结合的RLFCC特征在EERavg方面提供了20%的相对改进。
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