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Speech emotion recognition in emotional feedbackfor Human-Robot Interaction

机译:人机交互情感反馈中的语音情感识别

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摘要

For robots to plan their actions autonomously and interact with people, recognizing human emotions is crucial. For most humans nonverbal cues such as pitch, loudness, spectrum, speech rate are efficient carriers of emotions. The features of the sound of a spoken voice probably contains crucial information on the emotional state of the speaker, within this framework, a machine might use such properties of sound to recognize emotions. This work evaluated six different kinds of classifiers to predict six basic universal emotions from non-verbal features of human speech. The classification techniques used information from six audio files extracted from the eNTERFACE05 audio-visual emotion database. The information gain from a decision tree was also used in order to choose the most significant speech features, from a set of acoustic features commonly extracted in emotion analysis. The classifiers were evaluated with the proposed features and the features selected by the decision tree. With this feature selection could be observed that each one of compared classifiers increased the global accuracy and the recall. The best performance was obtained with Support Vector Machine and bayesNet.
机译:对于机器人自主地计划自己的动作并与人互动,识别人的情绪至关重要。对于大多数人而言,非语言提示(例如音调,响度,频谱,语速)是情感的有效载体。语音的声音特征可能包含有关说话者情绪状态的重要信息,在此框架内,机器可能会使用声音的这种属性来识别情绪。这项工作评估了六种不同的分类器,以根据人类语音的非语言特征预测六种基本的普遍情感。分类技术使用了从eNTERFACE05视听情感数据库中提取的六个音频文件中的信息。还使用从决策树中获得的信息来从情感分析中通常提取的一组声学特征中选择最重要的语音特征。使用提议的特征和决策树选择的特征对分类器进行评估。借助此功能,可以观察到比较的每个分类器均提高了整体准确性和召回率。使用支持向量机和bayesNet可获得最佳性能。

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