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首页> 外文期刊>Affective Computing, IEEE Transactions on >Classifier-Based Learning of Nonlinear Feature Manifold for Visualization of Emotional Speech Prosody
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Classifier-Based Learning of Nonlinear Feature Manifold for Visualization of Emotional Speech Prosody

机译:基于分类器的非线性特征流形学习,用于情感语音韵律的可视化

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摘要

Visualization of emotional speech data is an important tool for speech researchers who seek means to gain a deeper insight into the structure of complex multidimensional data. A visualization method is presented that utilizes feature selection and classifier optimization for learning Isomap manifolds of emotional speech data. The resulting manifold is based on those features that best discriminate between given emotional classes in the target space of specified embedding dimension. A nonlinear mapping function based on generalized regression neural networks (GRNNs) provides generalization for new data. A low-dimensional manifold of emotional speech data consisting of neutral, sad, angry, and happy expressions was constructed using prosodic and acoustic features of speech. Experimental results indicate that a 3D embedding provides the best classification performance. The manifold structure can be readily visualized and matches the circumplex and conical shapes predicted by dimensional models of emotion. Listening tests show excellent correlation between the organization of the data on the manifold and the listeners' judgment of emotional intensity.
机译:情感语音数据的可视化是语音研究人员的重要工具,他们寻求途径以更深入地了解复杂的多维数据的结构。提出了一种可视化方法,该方法利用特征选择和分类器优化来学习情感语音数据的Isomap流形。生成的流形基于最能在指定嵌入维度的目标空间中区分给定情感类别的那些特征。基于广义回归神经网络(GRNN)的非线性映射函数为新数据提供了概括。利用语音的韵律和声学特征,构建了由中性,悲伤,愤怒和快乐表达组成的低维情感语音数据流形。实验结果表明3D嵌入可提供最佳的分类性能。流形结构可以很容易地看到,并与由情感的尺寸模型预测的圆环和圆锥形相匹配。听力测试表明,流形上的数据组织与听众对情绪强度的判断之间具有极好的相关性。

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