Hun Lee Min, Siewiorek Daniel P, Smailagic Asim, Bernardino Alexandre, Bermúdez I Badia Sergi
Singapore Management University, Singapore, Singapore.
Carnegie Mellon University, Pittsburgh, USA.
User Model User-adapt Interact. 2023;33(2):545-569. doi: 10.1007/s11257-022-09348-5. Epub 2023 Mar 11.
Socially assistive robots are increasingly being explored to improve the engagement of older adults and people with disability in health and well-being-related exercises. However, even if people have various physical conditions, most prior work on social robot exercise coaching systems has utilized generic, predefined feedback. The deployment of these systems still remains a challenge. In this paper, we present our work of iteratively engaging therapists and post-stroke survivors to design, develop, and evaluate a social robot exercise coaching system for personalized rehabilitation. Through interviews with therapists, we designed how this system interacts with the user and then developed an interactive social robot exercise coaching system. This system integrates a neural network model with a rule-based model to automatically monitor and assess patients' rehabilitation exercises and can be tuned with individual patient's data to generate real-time, personalized corrective feedback for improvement. With the dataset of rehabilitation exercises from 15 post-stroke survivors, we demonstrated our system significantly improves its performance to assess patients' exercises while tuning with held-out patient's data. In addition, our real-world evaluation study showed that our system can adapt to new participants and achieved 0.81 average performance to assess their exercises, which is comparable to the experts' agreement level. We further discuss the potential benefits and limitations of our system in practice.
社会辅助机器人正越来越多地被用于提高老年人和残疾人参与健康及幸福相关锻炼的积极性。然而,尽管人们有各种各样的身体状况,但大多数关于社交机器人运动指导系统的先前工作都采用了通用的、预定义的反馈。这些系统的部署仍然是一个挑战。在本文中,我们展示了我们的工作,即反复让治疗师和中风后幸存者参与进来,以设计、开发和评估一个用于个性化康复的社交机器人运动指导系统。通过与治疗师的访谈,我们设计了该系统与用户的交互方式,然后开发了一个交互式社交机器人运动指导系统。该系统将神经网络模型与基于规则的模型相结合,以自动监测和评估患者的康复锻炼,并可根据个体患者的数据进行调整,以生成实时的、个性化的纠正反馈以促进改善。利用15名中风后幸存者的康复锻炼数据集,我们证明了我们的系统在使用留出的患者数据进行调整时,能显著提高其评估患者锻炼的性能。此外,我们的实际评估研究表明,我们的系统可以适应新的参与者,评估他们锻炼的平均性能达到0.81,这与专家的一致程度相当。我们还进一步讨论了我们的系统在实践中的潜在益处和局限性。