基于混合核和阈值融合的多类支持向量机语音情感分类

Na Yang, R. Muraleedharan, J. Kohl, I. Demirkol, W. Heinzelman, Melissa L. Sturge‐Apple
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引用次数: 54

摘要

情绪分类对于理解人类互动至关重要,因此也是行为研究的重要组成部分。虽然已经开发了许多算法,但情感分类的精度仍然不能满足算法在实际系统中使用的要求。在本文中,我们评估了一种从语音样本中提取基本声学特征的方法,该方法使用了一对全(OAA)支持向量机(SVM)学习算法。我们使用了一种新的混合核,其中我们为单个OAA分类器选择最优的核函数。OAA分类器的输出被归一化,并使用阈值融合机制进行组合,最终对情感进行分类。“相对置信度”较低的样本被保留为“未分类”,以进一步提高分类精度。结果表明,我们的方法对六类情绪分类的决策级召回率为80.5%,优于使用相同数据集的最先进方法。
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Speech-based emotion classification using multiclass SVM with hybrid kernel and thresholding fusion
Emotion classification is essential for understanding human interactions and hence is a vital component of behavioral studies. Although numerous algorithms have been developed, the emotion classification accuracy is still short of what is desired for the algorithms to be used in real systems. In this paper, we evaluate an approach where basic acoustic features are extracted from speech samples, and the One-Against-All (OAA) Support Vector Machine (SVM) learning algorithm is used. We use a novel hybrid kernel, where we choose the optimal kernel functions for the individual OAA classifiers. Outputs from the OAA classifiers are normalized and combined using a thresholding fusion mechanism to finally classify the emotion. Samples with low `relative confidence' are left as `unclassified' to further improve the classification accuracy. Results show that the decision-level recall of our approach for six-class emotion classification is 80.5%, outperforming a state-of-the-art approach that uses the same dataset.
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