Learning and Personalizing Socially Assistive Robot Behaviors to Aid with Activities of Daily Living

Author:

Moro Christina1,Nejat Goldie1,Mihailidis Alex2

Affiliation:

1. Autonomous Systems and Biomechatronics Laboratory, Department of Mechanical and Industrial Engineering, University of Toronto, and AGE-WELL Network of Centres of Excellence, Toronto, ON, Canada

2. AGE-WELL Network of Centres of Excellence, and Department of Occupational Science and Occupational Therapy, University of Toronto and Toronto Rehabilitation Institute, University Health Network, Toronto, ON, Canada

Abstract

Socially assistive robots can autonomously provide activity assistance to vulnerable populations, including those living with cognitive impairments. To provide effective assistance, these robots should be capable of displaying appropriate behaviors and personalizing them to a user's cognitive abilities. Our research focuses on the development of a novel robot learning architecture that uniquely combines learning from demonstration ( LfD ) and reinforcement learning ( RL ) algorithms to effectively teach socially assistive robots personalized behaviors. Caregivers can demonstrate a series of assistive behaviors for an activity to the robot, which it uses to learn general behaviors via LfD . This information is used to obtain initial assistive state-behavior pairings using a decision tree. Then, the robot uses an RL algorithm to obtain a policy for selecting the appropriate behavior personalized to the user's cognition level. Experiments were conducted with the socially assistive robot Casper to investigate the effectiveness of our proposed learning architecture. Results showed that Casper was able to learn personalized behaviors for the new assistive activity of tea-making, and that combining LfD and RL algorithms significantly reduces the time required for a robot to learn a new activity.

Funder

Canadian Consortium on Neurodegeneration in Aging

Ontario Graduate Scholarship (OGS) Program

AGE-WELL

Canada Research Chairs (CRC) Program

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Human-Computer Interaction

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