首页> 外文会议>2018 13th IEEE International Conference on Automatic Face amp; Gesture Recognition >Reverse Engineering Psychologically Valid Facial Expressions of Emotion into Social Robots
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Reverse Engineering Psychologically Valid Facial Expressions of Emotion into Social Robots

机译:逆向工程对社交机器人情感的心理有效面部表情

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Social robots are now part of human society, destined for schools, hospitals, and homes to perform a variety of tasks. To engage their human users, social robots must be equipped with the essential social skill of facial expression communication. Yet, even state-of-the-art social robots are limited in this ability because they often rely on a restricted set of facial expressions derived from theory with well-known limitations such as lacking naturalistic dynamics. With no agreed methodology to objectively engineer a broader variance of more psychologically impactful facial expressions into the social robots' repertoire, human-robot interactions remain restricted. Here, we address this generic challenge with new methodologies that can reverse-engineer dynamic facial expressions into a social robot head. Our data-driven, user-centered approach, which combines human perception with psychophysical methods, produced highly recognizable and human-like dynamic facial expressions of the six classic emotions that generally outperformed state-of-art social robot facial expressions. Our data demonstrates the feasibility of our method applied to social robotics and highlights the benefits of using a data-driven approach that puts human users as central to deriving facial expressions for social robots. We also discuss future work to reverse-engineer a wider range of socially relevant facial expressions including conversational messages (e.g., interest, confusion) and personality traits (e.g., trustworthiness, attractiveness). Together, our results highlight the key role that psychology must continue to play in the design of social robots.
机译:社交机器人现在已成为人类社会的一部分,旨在为学校,医院和家庭执行各种任务。为了吸引他们的人类用户,社交机器人必须具备面部表情交流的基本社交技能。但是,即使是最先进的社交机器人,其能力也受到限制,因为它们通常依赖于从理论衍生而来的有限的面部表情集,这些面部表情具有众所周知的局限性,例如缺乏自然主义的动力。由于没有商定的方法可以客观地将更多具有心理影响力的面部表情设计成更广泛的变化,从而融入社交机器人的曲目中,因此人机交互仍然受到限制。在这里,我们用新的方法应对这一普遍的挑战,这些方法可以将动态面部表情反向工程为社交机器人的头部。我们以数据为中心,以用户为中心的方法将人类的感知力与心理物理方法相结合,产生了六种经典情感的高度可识别且类似于人类的动态面部表情,这些表情通常优于最新的社交机器人面部表情。我们的数据证明了我们的方法适用于社交机器人的可行性,并强调了使用数据驱动方法的好处,该方法使人类用户成为派生社交机器人面部表情的关键。我们还将讨论未来工作,以对包括社交信息(例如,兴趣,困惑)和个性特征(例如,可信赖性,吸引力)在内的更广泛的社会相关面部表情进行反向工程。总之,我们的结果凸显了心理学在社交机器人设计中必须继续发挥的关键作用。

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