A Human-Centered and Adaptive Robotic System Using Deep Learning and Adaptive Predictive Controllers

Sari Toyoguchi, Enrique Coronado, G. Venture
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Abstract

The rise of single-person households coupled with a drop in social interaction due to the coronavirus disease 2019 (COVID-19) pandemic is triggering a loneliness pandemic. This social issue is producing mental health conditions (e.g., depression and stress) not only in the elderly population but also in young adults. In this context, social robots emerge as human-centered robotics technology that can potentially reduce mental health distress produced by social isolation. However, current robotics systems still do not reach a sufficient communication level to produce an effective coexistence with humans. This paper contributes to the ongoing efforts to produce a more seamless human-robot interaction. For this, we present a novel cognitive architecture that uses (i) deep learning methods for mood recognition from visual and voice modalities, (ii) personality and mood models for adaptation of robot behaviors, and (iii) adaptive generalized predictive controllers (AGPC) to produce suitable robot reactions. Experimental results indicate that our proposed system influenced people’s moods, potentially reducing stress levels during human-robot interaction.
基于深度学习和自适应预测控制器的以人为中心的自适应机器人系统
单身家庭的增加,加上2019冠状病毒病(COVID-19)大流行导致的社交活动减少,正在引发一场孤独大流行。这一社会问题不仅在老年人中而且在年轻人中造成了心理健康状况(例如抑郁和压力)。在这种背景下,社交机器人作为以人为中心的机器人技术出现,可以潜在地减少因社交孤立而产生的心理健康困扰。然而,目前的机器人系统仍然没有达到足够的沟通水平,以产生有效的共存与人类。本文有助于不断努力产生更无缝的人机交互。为此,我们提出了一种新的认知架构,该架构使用(i)深度学习方法从视觉和语音模式中识别情绪,(ii)人格和情绪模型用于适应机器人行为,以及(iii)自适应广义预测控制器(AGPC)来产生合适的机器人反应。实验结果表明,我们提出的系统可以影响人的情绪,潜在地降低人机交互过程中的压力水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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