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A real time and robust facial expression recognition and imitation approach for affective human-robot interaction using Gabor filtering

Felipe Cid, Pablo Bustos, Pedro José Núñez López

Year
2013
Citations
32

Abstract

Facial expressions are a rich source of communicative information about human behavior and emotion. This paper presents a real-time system for recognition and imitation of facial expressions in the context of affective Human Robot Interaction. The proposed method achieves a fast and robust facial feature extraction based on consecutively applying filters to the gradient image. An efficient Gabor filter is used, along with a set of morphological and convolutional filters to reduce the noise and the light dependence of the image acquired by the robot. Then, a set of invariant edge-based features are extracted and used as input to a Dynamic Bayesian Network classifier in order to estimate a human emotion. The output of this classifier updates a geometric robotic head model, which is used as a bridge between the human expressiveness and the robotic head. Experimental results demonstrate the accuracy and robustness of the proposed approach compared to similar systems.

Keywords

Artificial intelligenceComputer scienceComputer visionFacial expressionPattern recognition (psychology)Robustness (evolution)Feature extractionGabor filterClassifier (UML)Human–robot interaction

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