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ACOUSTIC-PHONETIC FEATURE BASED DIALECT IDENTIFICATION IN HINDI SPEECH

机译:基于语音特征的印度语语音方言识别

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Every individual has some unique speaking style and this variation influences their speech characteristics. Speakers’ native dialect is one of the major factors influencing their speech characteristics that influence the performance of automatic speech recognition system (ASR). In this paper, we describe a method to identify Hindi dialects and examine the contribution of different acoustic-phonetic features for the purpose. Mel frequency cepstral coefficients (MFCC), Perceptual linear prediction coefficients (PLP) and PLP derived from Mel-scale filter bank (MF-PLP) have been extracted as spectral features from the spoken utterances. They are further used to measure the capability of Auto-associative neural networks (AANN) for capturing non-linear relation specific to information from spectral features. Prosodic features are for capturing long - range features. Based on these features efficiency of AANN is measured to model intrinsic characteristics of speech features due to dialects.
机译:每个人都有自己独特的说话风格,这种变化会影响他们的言语特征。说话者的母语是影响其语音特性的主要因素之一,这些因素会影响自动语音识别系统(ASR)的性能。在本文中,我们描述了一种识别印地语方言并为此目的研究不同语音特征的方法。梅尔频率倒谱系数(MFCC),感知线性预测系数(PLP)和派生自梅尔规模滤波器组(MF-PLP)的PLP已从语音中提取为频谱特征。它们还用于测量自联想神经网络(AANN)从光谱特征中捕获特定于信息的非线性关系的能力。韵律特征用于捕获远程特征。基于这些特征,可以测量AANN的效率,以建模由于方言引起的语音特征的固有特征。

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