首页 /研究 /Tracking Gaze and Visual Focus of Attention of People Involved in Social Interaction
HRI

Tracking Gaze and Visual Focus of Attention of People Involved in Social Interaction

Benoît Massé, Silèye Ba, Radu Horaud

发表年份
2017
引用次数
98

摘要

The visual focus of attention (VFOA) has been recognized as a prominent conversational cue. We are interested in estimating and tracking the VFOAs associated with multi-party social interactions. We note that in this type of situations the participants either look at each other or at an object of interest; therefore their eyes are not always visible. Consequently both gaze and VFOA estimation cannot be based on eye detection and tracking. We propose a method that exploits the correlation between eye gaze and head movements. Both VFOA and gaze are modeled as latent variables in a Bayesian switching state-space model (also referred switching Kalman filter). The proposed formulation leads to a tractable learning method and to an efficient online inference procedure that simultaneously tracks gaze and visual focus. The method is tested and benchmarked using two publicly available datasets, Vernissage and LAEO, that contain typical multi-party human-robot and human-human interactions.

关键词

GazeArtificial intelligenceComputer scienceEye trackingFocus (optics)Computer visionTracking (education)Bayesian probabilityObject (grammar)Eye movement

相关论文

查看 HRI 分类全部论文