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Predicting Response to Joint Attention Performance in Human-Human Interaction Based on Human-Robot Interaction for Young Children with Autism Spectrum Disorder

机译:基于人机交互的自闭症谱系障碍儿童预测人-人交互中联合注意力表现的反应

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Autism Spectrum Disorders (ASD) are characterized by deficits in social communication skills, such as response to joint attention (RJA). Robotic systems have been designed and applied to help children with ASD improve their RJA skills. One of the most important goals of robot-assisted intervention is helping children generalize social interaction skills to interact with other people. Thus predicting children's human-human interaction (HHI) performance based on their human-robot interaction (HRI) process is an important task. However, to the best of our knowledge, little research exists exploring this topic. The Early Social-Communication Scales (ESCS) test is a measurement of nonverbal social skills, including RJA, for young children. We conducted two longitudinal user studies with a robot-mediated RJA system in young children with ASD, followed by HHI sessions consisting of ESCS administration. In this paper, we present findings regarding how to predict participants' RJA performance in HHI based on their head pose patterns in HRI, under a semi-supervised machine learning framework. As a three-class classification problem, we achieved a micro-averaged accuracy of 73.5%, which indicates the potential effectiveness of the proposed method.
机译:自闭症谱系障碍(ASD)的特征是社交沟通能力不足,例如对共同注意力的反应(RJA)。设计并应用了机器人系统来帮助ASD儿童提高RJA技能。机器人辅助干预的最重要目标之一是帮助儿童普及社交互动技能,以便与他人互动。因此,基于儿童的人机交互(HRI)过程来预测儿童的人机交互(HHI)性能是一项重要的任务。但是,据我们所知,很少有研究探讨该主题。早期社交沟通量表(ESCS)测试是对幼儿的非语言社交技能(包括RJA)的一种度量。我们使用机器人介导的RJA系统在ASD的幼儿中进行了两项纵向用户研究,随后进行了由ESCS管理组成的HHI会议。在本文中,我们提出了关于如何在半监督机器学习框架下基于参与者在HRI中的头部姿势模式来预测参与者在HHI中的RJA表现的发现。作为三类分类问题,我们实现了73.5%的微观平均准确度,这表明了该方法的潜在有效性。

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