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Facial emotion expressions in human-robot interaction: A survey

2021-03-12 09:39:43
Niyati Rawal, Ruth Maria Stock-Homburg

Abstract

Facial expressions are an ideal means of communicating one's emotions or intentions to others. This overview will focus on human facial expression recognition as well as robotic facial expression generation. In case of human facial expression recognition, both facial expression recognition on predefined datasets as well as in real time will be covered. For robotic facial expression generation, hand coded and automated methods i.e., facial expressions of a robot are generated by moving the features (eyes, mouth) of the robot by hand coding or automatically using machine learning techniques, will also be covered. There are already plenty of studies that achieve high accuracy for emotion expression recognition on predefined datasets, but the accuracy for facial expression recognition in real time is comparatively lower. In case of expression generation in robots, while most of the robots are capable of making basic facial expressions, there are not many studies that enable robots to do so automatically.

Abstract (translated)

URL

https://arxiv.org/abs/2103.07169

PDF

https://arxiv.org/pdf/2103.07169.pdf


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