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SPEAKER RECOGNITION METHOD COMBINING FFT, WAVELET FUNCTIONS AND NEURAL NETWORKS

机译:组合FFT,小波函数和神经网络的扬声器识别方法

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The method of speaker recognition based on wavelet functions and neural networks is presented in this paper. The wavelet functions are used to obtain the approximation function and the details of the speaker’s averaged spectrum in order to extract speaker’s voice characteristics from the frequency spectrum. The approximation function and the details are then used as input data for decision-making neural networks. In this recognition process, not only the decision on the speaker’s identity is made, but also the probability that the decision is correct can be provided.
机译:本文介绍了基于小波函数和神经网络的扬声器识别方法。小波函数用于获得近似函数和扬声器平均频谱的细节,以便从频谱中提取扬声器的语音特性。然后将近似函数和细节用作决策神经网络的输入数据。在这种识别过程中,不仅可以提供关于扬声器身份的决定,而且可以提供决定是正确的概率。

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