Speech Emotion Recognition Based on Deep Learning and Kernel Nonlinear PSVM

Zhiyan Han, Jian Wang
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引用次数: 6

Abstract

For the sake of ameliorating the precision of speech emotion recognition, this paper put forward a new emotion recognition technique based on Deep Learning and Kernel Nonlinear PSVM (Proximal Support Vector Machine) to discern four fundamental human emotion (angry, joy, sadness, surprise). First of all, preprocess speech signal. And then use DBN (Deep Belief Networks) to extract emotional features in speech signal automatically. After that, integrate the DBN automatic features and traditional features (prosody features and quality features) as the total features. Finally, use six Nonlinear Proximal Support Vector Machines to recognize the emotion and use majority voting principle to obtain the final identification result. To assess the new method, we compare the total features, DBN automatic features and traditional features. The experimental results indicate that the total features are better than the other two methods.
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基于深度学习和核非线性PSVM的语音情感识别
为了提高语音情感识别的精度,本文提出了一种基于深度学习和核非线性近端支持向量机(PSVM)的情感识别新技术,以识别人类的四种基本情感(愤怒、喜悦、悲伤、惊讶)。首先,对语音信号进行预处理。然后利用深度信念网络(Deep Belief Networks, DBN)自动提取语音信号中的情感特征。然后,将DBN自动特征和传统特征(韵律特征和质量特征)整合为总特征。最后,利用6个非线性近端支持向量机对情感进行识别,并利用多数投票原则得到最终的识别结果。为了评估新方法,我们比较了总特征、DBN自动特征和传统特征。实验结果表明,该方法的总特征值优于其他两种方法。
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