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Speech emotion recognition using multichannel parallel convolutional recurrent neural networks based on gammatone auditory filterbank

机译:基于伽马通听觉滤波器组的多通道并行卷积递归神经网络语音情感识别

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Speech Emotion Recognition (SER) using deep learning methods based on computational auditory models of human auditory system is a new way to identify emotional state. In this paper, we propose to utilize multichannel parallel convolutional recurrent neural networks (MPCRNN) to extract salient features based on Gammatone auditory filterbank from raw waveform and reveal that this method is effective for speech emotion recognition. We first divide the speech signal into segments, and then get multichannel data using Gammatone auditory filterbank, which is used as a first stage before applying MPCRNN to get the most relevant features for emotion recognition from speech. We subsequently obtain emotion state probability distribution for each speech segment. Eventually, utterance-level features are constructed from segment-level probability distributions and fed into support vector machine (SVM) to identify the emotions. According to the experimental results, speech emotion features can be effectively learned utilizing the proposed deep learning approach based on Gammatone auditory filterbank.
机译:使用基于人类听觉系统的计算听觉模型的深度学习方法进行语音情感识别(SER)是一种识别情感状态的新方法。在本文中,我们建议利用多通道并行卷积递归神经网络(MPCRNN)从原始波形中提取基于Gammatone听觉滤波器组的显着特征,并证明该方法对于语音情感识别是有效的。我们首先将语音信号划分为多个段,然后使用Gammatone听觉滤波器组获取多通道数据,这是在应用MPCRNN从语音中获得最相关的情感识别功能之前的第一阶段。随后,我们获得每个语音段的情绪状态概率分布。最终,从片段级别的概率分布构建话语级别的特征,并将其馈入支持向量机(SVM)以识别情绪。根据实验结果,利用基于伽马通听觉滤波器组的深度学习方法可以有效地学习语音情感特征。

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