Automated analysis of interactional synchrony using robust facial tracking and expression recognition

FG(2013)

引用 15|浏览44
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摘要
In this paper, we propose an automated, data-driven and unobtrusive framework to analyze interactional synchrony. We use this information to determine whether interpersonal synchrony can be an indicator of deceit. Our framework includes a robust facial tracking module, an effective expression recognition method, synchrony feature extraction and feature selection methods. These synchrony features are used to learn classification models for the deception recognition. To evaluate our proposed framework, we have conducted extensive experiments on a database of 242 video samples. We validate the performance of each technical module in our framework, and also show that these synchrony features are very effective at detecting deception.
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关键词
video signal processing,synchrony feature extraction method,face recognition,interactional synchrony analysis,feature selection method,expression recognition,interpersonal synchrony,video sample,deception recognition,emotion recognition,feature extraction,image classification,object tracking,classification model,robust facial tracking,visualization,correlation,face,vectors,accuracy,shape
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