Home /Research /Emotion recognition based on human gesture and speech information using RT middleware
HRI

Emotion recognition based on human gesture and speech information using RT middleware

Hai Vu, Yoichi Yamazaki, Fei Dong, Kaoru Hirota

Year
2011
Citations
31

Abstract

A bi-modal emotion recognition approach is proposed for recognition of four emotions that integrate information from gestures and speech. The outputs from two unimodal emotion recognition systems based on affective speech and expressive gesture are fused on a decision level fusion by using weight criterion fusion and best probability plus majority vote fusion methods, and the performance of classifier which performs better than each uni-modal and is helpful in recognizing suitable emotions for communication situations. To validate the proposal, fifty Japanese words (or phrases) and 8 types of gestures that are recorded from five participants are used, and the emotion recognition rate increases up to 85.39%. The proposal is able to extent to using more than other modalities and useful in automatic emotion recognition system for human-robot communication.

Keywords

GestureSpeech recognitionComputer scienceEmotion recognitionModalitiesClassifier (UML)Gesture recognitionModalArtificial intelligenceInformation fusion

Related papers

Browse all HRI papers