Javed Hifza, Lee WonHyong, Park Chung Hyuk
Assistive Robotics and Telemedicine Laboratory, Department of Biomedical Engineering, School of Engineering and Applied Science, The George Washington University, Washington, DC, United States.
School of Computer Science and Electrical Engineering, Handong Global University, Pohang, South Korea.
Front Robot AI. 2020 Apr 15;7:43. doi: 10.3389/frobt.2020.00043. eCollection 2020.
Social engagement is a key indicator of an individual's socio-emotional and cognitive states. For a child with Autism Spectrum Disorder (ASD), this serves as an important factor in assessing the quality of the interactions and interventions. So far, qualitative measures of social engagement have been used extensively in research and in practice, but a reliable, objective, and quantitative measure is yet to be widely accepted and utilized. In this paper, we present our work on the development of a framework for the automated measurement of social engagement in children with ASD that can be utilized in real-world settings for the long-term clinical monitoring of a child's social behaviors as well as for the evaluation of the intervention methods being used. We present a computational modeling approach to derive the social engagement metric based on a user study with children between the ages of 4 and 12 years. The study was conducted within a child-robot interaction setting that targets sensory processing skills in children. We collected video, audio and motion-tracking data from the subjects and used them to generate personalized models of social engagement by training a multi-channel and multi-layer convolutional neural network. We then evaluated the performance of this network by comparing it with traditional classifiers and assessed its limitations, followed by discussions on the next steps toward finding a comprehensive and accurate metric for social engagement in ASD.
社交参与是个体社会情感和认知状态的关键指标。对于患有自闭症谱系障碍(ASD)的儿童来说,这是评估互动和干预质量的一个重要因素。到目前为止,社交参与的定性测量方法在研究和实践中已被广泛使用,但一种可靠、客观且定量的测量方法尚未被广泛接受和应用。在本文中,我们展示了我们在开发一个用于自动测量ASD儿童社交参与度的框架方面所做的工作,该框架可在现实环境中用于对儿童社交行为的长期临床监测以及对所使用的干预方法的评估。我们提出了一种计算建模方法,基于对4至12岁儿童的用户研究来推导社交参与度指标。该研究是在一个针对儿童感官处理技能的儿童与机器人互动环境中进行的。我们从受试者那里收集了视频、音频和运动跟踪数据,并通过训练一个多通道、多层卷积神经网络,用这些数据生成社交参与度的个性化模型。然后,我们通过将该网络与传统分类器进行比较来评估其性能,并评估其局限性,随后讨论了为找到一个全面、准确的ASD社交参与度指标而采取的下一步措施。