基于GUMI核的SVM在语音情感识别中的特征选择

I. Trabelsi, M. Bouhlel
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引用次数: 17

摘要

语音情感识别是实现高效人机交互的必要条件。现代自动语音情感识别系统大多采用高斯混合模型(GMM)和支持向量机(SVM)。GMM以其在光谱建模中的性能和可扩展性而闻名,而SVM则以其判别能力而闻名。GMM-超向量通过GMM参数均值向量、协方差矩阵和混合权重来表征情感风格。GMM-超向量支持向量机同时受益于GMM和SVM框架。本文成功地使用了基于Bhattacharyya距离的GMM-UBM平均区间GUMI核。在超向量空间上利用CFSSubsetEval结合Best first算法和Greedy逐步算法来选择最重要的特征。该框架使用mel频率倒谱MFCC系数和感知线性预测PLP特征在两个不同的情感数据库(即Surrey音频表达情感和柏林情感语音数据库)上进行了说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Selection for GUMI Kernel-Based SVM in Speech Emotion Recognition
Speech emotion recognition is the indispensable requirement for efficient human machine interaction. Most modern automatic speech emotion recognition systems use Gaussian mixture models GMM and Support Vector Machines SVM. GMM are known for their performance and scalability in the spectral modeling while SVM are known for their discriminatory power. A GMM-supervector characterizes an emotional style by the GMM parameters mean vectors, covariance matrices, and mixture weights. GMM-supervector SVM benefits from both GMM and SVM frameworks. In this paper, the GMM-UBM mean interval GUMI kernel based on the Bhattacharyya distance is successfully used. CFSSubsetEval combined with Best first algorithm and Greedy stepwise were also utilized on the supervectors space in order to select the most important features. This framework is illustrated using Mel-frequency cepstral MFCC coefficients and Perceptual Linear Prediction PLP features on two different emotional databases namely the Surrey Audio-Expressed Emotion and the Berlin Emotional speech Database.
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