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Acoustic modeling using auditory model features and Convolutional neural Network

机译:声学模型特征和卷积神经网络的声学建模

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The state of art automatic speech recognition systems use Deep Neural Networks(DNN) for acoustic modeling. More recently, Convolutional neural Networks(CNN) have shown substantial acoustic modelling capabilities due to its ability to deal with structural locality in the feature space. In this paper, a detailed study of CNN based acoustic models on TIMIT database has been performed. For feature extraction an biologically motivated auditory model is simulated using Patterson and Holdsworth filter bank. MFSC features are also extracted for comparison. The experiments show that CNN with the auditory model features outperforms the conventional acoustic models which use mel spectral features.
机译:艺术状态自动语音识别系统使用深神经网络(DNN)进行声学建模。最近,由于其在特征空间中处理结构局部的能力,卷积神经网络(CNN)已经示出了很大的声学建模能力。在本文中,已经执行了对Timit数据库上的基于CNN的声学模型的详细研究。对于特征提取,使用PATTERSON和HOLDSWORTH滤波器模拟生物激励的听觉模型。还提取了MFSC功能以进行比较。实验表明,具有听觉模型功能的CNN优于使用MEL光谱特征的传统声学模型。

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