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Automatic Speaker Recognition from Speech Signals Using Self Organizing Feature Map and Hybrid Neural Network

机译:使用自组织特征图和混合神经网络的语音信号自动扬声器识别

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This paper explains a new hybrid method for Automatic Speaker Recognition using speech signals based on the Artificial Neural Network (ANN). ASR performance characteristics is regarded as the foremost challenge and necessitated to be improved. This research work mainly focusses on resolving the ASR problems as well as to improve the accuracy of the prediction of a speaker.. Mel Frequency Cepstral Coefficient (MFCC) is greatly exploited for signal feature extraction.The input samples are created using these extracted features and its dimensions have been reduced using Self Organizing Feature Map (SOFM). Finally, using the reduced input samples, recognition is performed using Multilayer Perceptron (MLP) with Bayesian Regularization.. The training of the network has been accomplished and verified by means of real speech datasets from the Multivariability speaker recognition database for 10 speakers. The proposed method is validated by performance estimation as well as classification accuracies in contradiction to other models. The proposed method gives better recognition rate and 93.33% accuracy is attained.
机译:本文介绍了一种新的混合方法,用于使用基于人工神经网络(ANN)的语音信号的自动扬声器识别。 ASR性能特征被认为是最重要的挑战,必然得到改善。这项研究主要集中在解决ASR问题以及提高扬声器预测的准确性.MEL频率患者谱系码(MFCC)大大利用信号特征提取。使用这些提取的特征来创建输入样本使用自组织特征图(SOFM)减少了其尺寸。最后,使用减少的输入样本,使用Multidayer Perceptron(MLP)与贝叶斯正则化进行识别。通过来自多变量扬声器识别数据库的真实语音数据集进行了10个扬声器的实际语音数据集,完成了网络训练。通过性能估计以及对其他模型矛盾的分类精度来验证该方法。所提出的方法提供更好的识别率,获得了93.33%的准确性。

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