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Speech Emotion Recognition Using an Enhanced Kernel Isomap for Human-Robot Interaction

Shiqing Zhang, Xiaoming Zhao, Bicheng Lei

Year
2013
Citations
27

Abstract

Speech emotion recognition is currently an active research subject and has attracted extensive interest in the science community due to its vital application to human-robot interaction. Most speech emotion recognition systems employ high-dimensional speech features, indicating human emotion expression, to improve emotion recognition performance. To effectively reduce the size of speech features, in this paper, a new nonlinear dimensionality reduction method, called ‘enhanced kernel isometric mapping’ (EKIsomap), is proposed and applied for speech emotion recognition in human-robot interaction. The proposed method is used to nonlinearly extract the low-dimensional discriminating embedded data representations from the original high-dimensional speech features with a striking improvement of performance on the speech emotion recognition tasks. Experimental results on the popular Berlin emotional speech corpus demonstrate the effectiveness of the proposed method.

Keywords

Computer scienceIsomapHuman–robot interactionSpeech recognitionRobotArtificial intelligenceEmotion recognitionHuman–computer interactionPattern recognition (psychology)Computer vision

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