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SPEECH EMOTION RECOGNITION COMBINING ACOUSTIC FEATURES AND LINGUISTIC INFORMATION IN A HYBRID SUPPORT VECTOR MACHINE - BELIEF NETWORK ARCHITECTURE

机译:语音情感识别与混合动力支持向量机中的声学特征和语言信息相结合 - 信仰网络架构

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In this contribution we introduce a novel approach to the combination of acoustic features and language information for a most robust automatic recognition of a speaker's emotion. Seven discrete emotional states are classified throughout the work. Firstly a model for the recognition of emotion by acoustic features is presented. The derived features of the signal-, pitch-, energy, and spectral contours are ranked by their quantitative contribution to the estimation of an emotion. Several different classification methods including linear classifiers, Gaussian Mixture Models, Neural Nets, and Support Vector Machines are compared by their performance within this task. Secondly an approach to emotion recognition by the spoken content is introduced applying Belief Network based spotting for emotional key-phrases. Finally the two information sources will be integrated in a soft decision fusion by using a Neural Net. The gain will be evaluated and compared to other advances. Two emotional speech corpora used for training and evaluation are described in detail and the results achieved applying the propagated novel advance to speaker emotion recognition are presented and discussed.
机译:在这一贡献中,我们向声学特征和语言信息的组合引入了一种新颖的方法,以获得扬声器情绪的最强大的自动识别。在整个工作中分类了七个离散情绪状态。首先,提出了一种通过声学特征识别情绪的模型。信号,间距,能量和光谱轮廓的导出特征是通过它们对情绪估计的定量贡献进行排名。通过在此任务中的性能下比较了几种不同的分类方法,包括线性分类器,高斯混合模型,神经网和支持向量机。其次,通过口头内容的情感认可方法是基于信仰网络的情感关键短语。最后,通过使用神经网络,两个信息源将集成在软决策融合中。将评估并与其他进步进行评估。详细描述了两种用于培训和评估的情绪语音语音,并介绍并讨论了将传播的新颖进步应用于扬声器情绪识别的结果。

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