基于多核高斯过程的语音情感分类

Sih-Huei Chen, Jia-Ching Wang, Wen-Chi Hsieh, Yu-Hao Chin, Chin-Wen Ho, Chung-Hsien Wu
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引用次数: 7

摘要

鉴于近年来人们对语音情绪分类的关注日益增加,本文提出了一种基于多核高斯过程的语音情绪分类方法。研究了对分类精度起重要作用的分类问题的两个主要方面,即特征提取和分类。选择韵律特征和其他在音效分类中广泛使用的特征。然后将半非负矩阵分解算法应用于所提出的特征,以获得更多的特征信息。在特征提取之后,使用多核高斯过程(GP)进行分类,其中通过结合线性核和径向基函数(RBF)核,从学习算法中的数据中获得两个相似概念。结果表明,本文提出的语音情感分类方法准确率达到77.74%。此外,比较不同的方法表明,所提出的系统比其他方法性能最好。
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Speech emotion classification using multiple kernel Gaussian process
Given the increasing attention paid to speech emotion classification in recent years, this work presents a novel speech emotion classification approach based on the multiple kernel Gaussian process. Two major aspects of a classification problem that play an important role in classification accuracy are addressed, i.e. feature extraction and classification. Prosodic features and other features widely used in sound effect classification are selected. A semi-nonnegative matrix factorization algorithm is then applied to the proposed features in order to obtain more information about the features. Following feature extraction, a multiple kernel Gaussian process (GP) is used for classification, in which two similarity notions from our data in the learning algorithm are presented by combining the linear kernel and radial basis function (RBF) kernel. According to our results, the proposed speech emotion classification apporach achieve an accuracy of 77.74%. Moreover, comparing different apporaches reveals that the proposed system performs best than other apporaches.
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