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Closed-Set Text-Independent Speaker Identification System Using Multiple ANN Classifiers

机译:使用多个ANN分类器的封闭式信息无关扬声器识别系统

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This paper presents an Artificial Neural Network (ANN) based algorithm design to identify speakers of specific dialect using features obtained from various speaker dependent parameters of voiced speech. It is evident that speakers can be identified from their voiced sounds which have higher energy. Voice sounds are extracted from continuous speech signal from a set of trained male and female speakers. Here, feature vectors are generated from the speaker specific characteristics like pitch, linear prediction (LP) residual and empirical mode decomposition (EMD) residual of the speech. Using these feature vectors,three different ANN classifiers are designed using Multilayer Perceptron (MLP) and Recurrent Neural Network (RNN) to identify the speakers along with the dialect of the speaker. From the experiment, it is found that a hybrid classifier designed by combining all three classifiers correctly identifies more than 90% of the enrolled speakers.
机译:本文介绍了一种基于人工神经网络(ANN)算法设计,用于使用从各种扬声器相关参数的各种扬声器相关参数获得的特征来识别特定方言的扬声器。很明显,可以从具有更高能量的浊音声音中识别扬声器。声音从一组培训的男性和女性扬声器中从连续语音信号中提取。这里,特征向量是从扬声器特定特征生成的,如音调,线性预测(LP)残差和经验模式分解(EMD)的语音残余。使用这些特征向量,三种不同的ANN分类器是使用多层erceptron(MLP)和经常性神经网络(RNN)设计的,以识别扬声器以及扬声器的方言。从实验开始,发现通过组合所有三个分类器来正确地识别已注册扬声器的90%以上的混合分类器。

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