基于线性预测编码和递归神经网络的语音情绪识别

Muhammad Yusup Zakaria, E. C. Djamal, Fikri Nugraha, Fatan Kasyidi
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摘要

社会情感交流近年来有了显著的发展,尤其是在情感的言语理解方面。人际关系自然会根据对话者在特定问题上的行为来调整他们的反应。以往的研究表明,利用神经网络架构可以基于语音识别情绪,但由于数据的不平衡和分类系统设计的问题,准确率的结果并不理想。本研究采用线性预测编码(LPC)。LPC可以代表对话的发音。从16个系数中,将LPC作为向量特征作为输入,使用递归神经网络(RNN)进行语音情绪识别。采用长短期记忆(LSTM)或门控循环单元(GRU)结构克服梯度消失或爆炸。在识别阶段,使用前向传播和softmax激活函数。我们已经进行了一个模拟,使用RNN作为进行情感识别的方法。本研究结果RNNGRU采用Adam优化模型,学习率为0.001,准确率为90.93%,损失值为0.216。相比之下,RNN-LSTM的准确率为87.50%,损失值为0.262。实验结果表明,基于Adam优化方法的RNN-GRU模型得到了最佳模型。得到的F-Measure值为0.91。
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Speech Emotion Identification Using Linear Predictive Coding and Recurrent Neural
Social, affective communication in recent years shows significant developments, especially in the verbal understanding of emotions. Human connection naturally adjusts to their responses based on the actions of their interlocutor in a particular matter. Previous research has shown that the use of neural network architecture can identify emotions based on speech, but the results of accuracy are not good due to the imbalance of data and problems with the design of the classification system. This study uses Linear Predictive Coding (LPC). LPC can represent the pronunciation of one’s dialogue. From 16 coefficient LPC is used as a vector feature as input for voice emotion identification using Recurrent Neural Network (RNN). Long Short Term Memory (LSTM) or Gated Recurrent Unit (GRU) architecture is used to overcome vanishing or exploding gradient. At the identification stage, that uses forward propagation with a softmax activation function. We have conducted a simulation using RNN as a method for making emotional identification. The results of this study RNNGRU using Adam optimization model with a learning rate of 0.001 get an accuracy of 90.93% and a losses value of 0.216. In comparison, the RNN-LSTM got an accuracy of 87.50% and losses value of 0.262. The experimental results show that the best model is achieved when using the RNN-GRU with the Adam optimization method. The F-Measure value obtained is 0.91.
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