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Robotic Telemedicine for Mental Health: A Multimodal Approach to Improve Human-Robot Engagement

机译:精神健康机器人远程医疗:一种改善人体机器人参与的多式联法方法

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COVID-19 has severely impacted mental health in vulnerable demographics, in particular older adults, who face unprecedented isolation. Consequences, while globally severe, are acutely pronounced in low- and middle-income countries (LMICs) confronting pronounced gaps in resources and clinician accessibility. Social robots are well-recognized for their potential to support mental health, yet user compliance (i.e., trust) demands seamless affective human-robot interactions; natural ‘human-like’ conversations are required in simple, inexpensive, deployable platforms. We present the design, development, and pilot testing of a multimodal robotic framework fusing verbal (contextual speech) and nonverbal (facial expressions) social cues, aimed to improve engagement in human-robot interaction and ultimately facilitate mental health telemedicine during and beyond the COVID-19 pandemic. We report the design optimization of a hybrid face robot, which combines digital facial expressions based on mathematical affect space mapping with static 3D facial features. We further introduce a contextual virtual assistant with integrated cloud-based AI coupled to the robot’s facial representation of emotions, such that the robot adapts its emotional response to users’ speech in real-time. Experiments with healthy participants demonstrate emotion recognition exceeding 90% for happy, tired, sad, angry, surprised and stern/disgusted robotic emotions. When separated, stern and disgusted are occasionally transposed (70%+ accuracy overall) but are easily distinguishable from other emotions. A qualitative user experience analysis indicates overall enthusiastic and engaging reception to human-robot multimodal interaction with the new framework. The robot has been modified to enable clinical telemedicine for cognitive engagement with older adults and people with dementia (PwD) in LMICs. The mechanically simple and low-cost social robot has been deployed in pilot tests to support older individuals and PwD at the Schizophrenia Research Foundation (SCARF) in Chennai, India. A procedure for deployment addressing challenges in cultural acceptance, end-user acclimatization and resource allocation is further introduced. Results indicate strong promise to stimulate human-robot psychosocial interaction through the hybrid-face robotic system. Future work is targeting deployment for telemedicine to mitigate the mental health impact of COVID-19 on older adults and PwD in both LMICs and higher income regions.
机译:Covid-19在脆弱的人口统计学中受到严重影响的心理健康,特别是面临前所未有的孤立的老年人。在低收入和中等收入国家(LMIC)中敏锐地宣判在资源和临床医生可访问性方面的低收入和中等收入国家(LMIC)急剧发音。社会机器人得到公认的潜力,以支持心理健康,但用户合规性(即,信托)要求无缝的情感人体机器人相互作用;在简单,廉价,可部署平台中需要自然的“人类”对话。我们展示了多模式机器人框架融合口头(上下文演讲)和非语言(面部表情)社会提示的设计,开发和试验试验,旨在改善人体机器人互动的参与,并最终在科迪德和超越Covid期间促进心理健康秘密医疗-19大流行。我们报告了混合面机器人的设计优化,基于数学影响空间映射与静态3D面部特征相结合的数码面部表达。我们进一步引入了一种中文虚拟助手,具有集成的基于云的AI,耦合到机器人的情感表现形式,使得机器人正在实时地对用户的语音进行情感反应。健康参与者的实验表明,快乐,疲惫,悲伤,愤怒,惊讶和严厉/令人厌恶的机器人情绪超过90%的情绪识别。当分离时,斯特恩和厌恶偶尔会转播(整体70%+精度),但容易与其他情绪区分开。定性用户体验分析表明,与新框架的人机多模态相互作用的全面热情和接收。机器人已经被修改,以使临床远程医疗能够与老年人和患有痴呆症(PWD)的人的认知接触在LMIC中。在飞行员试验中部署了机械简单和低成本的社会机器人,以支持在印度钦奈精神分裂症研究基金会(围巾)的老年人和PWD。进一步推出了部署文化接受,最终用户适应和资源分配的挑战的程序。结果表明,刺激杂交面部机器人系统的人机心理社会相互作用的强烈承诺。未来的工作是针对远程医疗的部署,以减轻Covid-19对老年人和较高收入区域的老年人和PWD的心理健康影响。

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