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Development of a speaker recognition system using wavelets and artificial neural networks

机译:使用小波和人工神经网络的扬声器识别系统的开发

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This paper addresses the problem of speaker recognition from speech signals. The study focuses on the development of a speaker recognition system comprising two modules: a wavelet-based feature extractor, and a neural-network-based classifier. We have conducted a number of experiments to investigate the applicability of Discrete Wavelet Transform (DWT) in extracting discriminative features from the speech signals, and have examined various models from the Adaptive Resonance Theory (ART) family of neural networks in classifying the extracted features. The results indicate that DWT could be a potential feature extraction tool for speaker recognition. In addition, the ART-based classifiers have yielded very promising recognition accuracy at more than 81%.
机译:本文解决了语音信号的扬声器识别问题。该研究侧重于开发包括两个模块的扬声器识别系统:基于小波的特征提取器和基于神经网络的分类器。我们已经进行了许多实验,以研究离散小波变换(DWT)在提取语音信号中提取辨别特征的实验性,并且已经研究了来自自适应共振理论(ART)神经网络的各种模型在分类提取的特征中。结果表明,DWT可以是扬声器识别的潜在特征提取工具。此外,基于艺术的分类器在超过81%的情况下产生非常有前景的识别精度。

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