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Analysis and comparison of two task models in a partially observable Markov decision process based assistive system

机译:基于局部可观马尔可夫决策过程的辅助系统中两个任务模型的分析与比较

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摘要

People suffering from dementia experience difficulties during their daily self-care activities. The resulting loss of independence makes them rely on caregivers to go through their daily routine. However, such reliance on caregivers may conflict with their need for privacy. Hence, there is a need for technology that can provide assistance automatically. In the field of artificial intelligent assistive technology, the module in charge of automatically guiding users during a task is called Task Manager. This paper compares two task modeling approaches in an assistive system named COACH (Cognitive Orthosis for Assisting with aCtivities in the Home), which was designed to provide guidance to older adults with dementia during the handwashing task. The results obtained show how implementing a suitable Task Modeling approach led to 180.4% improvement of appropriately timed prompts provided by the system.
机译:患有痴呆症的人在日常自我保健活动中会遇到困难。结果导致失去独立性,使他们依靠看护人来完成日常工作。但是,这种对看护人的依赖可能会与他们对隐私的需求产生冲突。因此,需要可以自动提供帮助的技术。在人工智能辅助技术领域,负责在任务执行过程中自动指导用户的模块称为任务管理器。本文比较了名为COACH(认知矫形器)的辅助系统中的两种任务建模方法,该系统旨在为洗手任务中的老年痴呆症患者提供指导。获得的结果表明,实施适当的任务建模方法如何使系统提供的适当定时的提示提高180.4%。

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