从自闭症谱系障碍治疗示范的野外学习

Ala'aldin Hijaz, Jessica Korneder, W. Louie
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引用次数: 4

摘要

目前的研究表明,社会辅助机器人(sar)提供基于应用行为分析(ABA)的干预措施,可以教会自闭症谱系障碍(ASD)患者宝贵的社交、情感、沟通和学术技能。这些机器人介导的干预(RMIs)通常通过远程操作提供,这给治疗师带来了额外或类似的工作量,因为他们直接管理干预。由机器人自主向ASD患者提供ABA治疗可以显著减少工作量,提高这项技术的可用性和接受度。然而,由于ASD患者学习需求的快速变化和不同,使用有限的干预措施对SAR的自主性进行预先编程是不够的。为了适用于临床环境,治疗师必须能够定制和个性化干预,以满足每个人的需求。为了实现这一目标,在本文中,我们提出了一个概念验证的系统的初步开发和部署,该系统可以在野外学习治疗师在向自闭症儿童提供基于aba的干预期间的语言行为。我们还提供了关于策略结果的初步数据,该策略是根据LfD系统在野外部署期间提供的演示中收集的数据进行训练的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In-the-Wild Learning from Demonstration for Therapies for Autism Spectrum Disorder
Current studies have demonstrated that Socially Assistive Robots (SARs) delivering Applied Behavior Analysis (ABA) based interventions can teach individuals with Autism Spectrum Disorder (ASD) valuable social, emotional, communication and academic skills. These robot-mediated interventions (RMIs) are typically delivered via teleoperation, which places additional or similar workloads on therapists as administering interventions directly. The autonomous delivery of ABA therapies to individuals with ASD by a robot could significantly reduce workload and improve the usability as well as acceptance of this technology. However, pre-programming the autonomy of a SAR with a limited set of interventions is not sufficient for clinical practice due to the rapidly changing and different learning needs of individuals with ASD. In order to be applicable in clinical settings, therapists must be capable of customizing and personalizing interventions to the needs of each individual. Towards this goal, in this paper we present the initial development and deployment of a proof-of-concept Learning from Demonstration (LfD) system in-the-wild to learn the verbal behavior of therapists during the delivery of an ABA-based intervention to children with ASD. We also present preliminary data on the results of a policy trained on data collected from demonstrations provided during this in-the-wild deployment of our LfD system.
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