The goal of this work is to build a real-time emotion detection system which utilizes multi-modal fusion of different timescale features of speech. Conventional spectral and prosody features are used for intra-frame and supra-frame features respectively, and a new information fusion algorithm which takes care of the characteristics of each machine learning algorithm is introduced. In this framework, the proposed system can be associated with additional features, such as lexical or discourse information, in later steps. To verify the real-time system performance, binary decision tasks on angry and neutral emotion are performed using concatenated speech signal simulating real-time conditions.
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