Improving Human–Robot Interaction by Enhancing NAO Robot Awareness of Human Facial Expression

人机交互 面部表情 机器人 人机交互 表达式(计算机科学) 人工智能 计算机科学 心理学 计算机视觉 程序设计语言
作者
Chiara Filippini,David Perpetuini,Daniela Cardone,Arcangelo Merla
出处
期刊:Sensors [Multidisciplinary Digital Publishing Institute]
卷期号:21 (19): 6438-6438 被引量:31
标识
DOI:10.3390/s21196438
摘要

An intriguing challenge in the human–robot interaction field is the prospect of endowing robots with emotional intelligence to make the interaction more genuine, intuitive, and natural. A crucial aspect in achieving this goal is the robot’s capability to infer and interpret human emotions. Thanks to its design and open programming platform, the NAO humanoid robot is one of the most widely used agents for human interaction. As with person-to-person communication, facial expressions are the privileged channel for recognizing the interlocutor’s emotional expressions. Although NAO is equipped with a facial expression recognition module, specific use cases may require additional features and affective computing capabilities that are not currently available. This study proposes a highly accurate convolutional-neural-network-based facial expression recognition model that is able to further enhance the NAO robot’ awareness of human facial expressions and provide the robot with an interlocutor’s arousal level detection capability. Indeed, the model tested during human–robot interactions was 91% and 90% accurate in recognizing happy and sad facial expressions, respectively; 75% accurate in recognizing surprised and scared expressions; and less accurate in recognizing neutral and angry expressions. Finally, the model was successfully integrated into the NAO SDK, thus allowing for high-performing facial expression classification with an inference time of 0.34 ± 0.04 s.
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