A Generative Auditory Model Embedded Neural Network for Speech Processing

Yu-Wen Lo, Yih-Liang Shen, Y. Liao, T. Chi
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引用次数: 1

Abstract

Before the era of the neural network (NN), features extracted from auditory models have been applied to various speech applications and been demonstrated more robust against noise than conventional speech-processing features. What's the role of auditory models in the current NN era? Are they obsolete? To answer this question, we construct a NN with a generative auditory model embedded to process speech signals. The generative auditory model consists of two stages, the stage of spectrum estimation in the logarithmic-frequency axis by the cochlea and the stage of spectral-temporal analysis in the modulation domain by the auditory cortex. The NN is evaluated in a simple speaker identification task. Experiment results show that the auditory model embedded NN is still more robust against noise, especially in low SNR conditions, than the randomly-initialized NN in speaker identification.
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基于生成听觉模型的嵌入式神经网络语音处理
在神经网络(NN)时代之前,从听觉模型中提取的特征已经应用于各种语音应用,并且被证明比传统的语音处理特征对噪声更具鲁棒性。在当前的神经网络时代,听觉模型的作用是什么?它们过时了吗?为了回答这个问题,我们构建了一个嵌入了生成听觉模型的神经网络来处理语音信号。生成式听觉模型包括两个阶段,即耳蜗在对数频率轴上的频谱估计阶段和听觉皮层在调制域的频谱时间分析阶段。在一个简单的说话人识别任务中对神经网络进行评估。实验结果表明,在低信噪比条件下,嵌入听觉模型的神经网络在说话人识别方面仍然比随机初始化神经网络具有更强的鲁棒性。
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