A Quantitative Analysis of Activities of Daily Living: Insights into Improving Functional Independence with Assistive Robotics
Laura Petrich, Jun Jin, Masood Dehghan, Martin Jagersand

TL;DR
This paper quantitatively analyzes Activities of Daily Living (ADL) using lifelogging data to inform assistive robotics development, bridging the gap between robotics and healthcare perspectives on task frequency and taxonomy.
Contribution
It introduces a quantitative approach to analyze ADL frequencies and motions, and proposes a robotics-relevant taxonomy to unify task representations across domains.
Findings
ADL task frequency varies across environments.
Short-term movement data reveals common domestic activities.
A new taxonomy aligns robotics and healthcare task classifications.
Abstract
Human assistive robotics have the potential to help the elderly and individuals living with disabilities with their Activities of Daily Living (ADL). Robotics researchers focus on assistive tasks from the perspective of various control schemes and motion types. Health research on the other hand focuses on clinical assessment and rehabilitation, arguably leaving important differences between the two domains. In particular, little is known quantitatively on which ADLs are typically carried out in a persons everyday environment - at home, work, etc. Understanding what activities are frequently carried out during the day can help guide the development and prioritization of robotic technology for in-home assistive robotic deployment. This study targets several lifelogging databases, where we compute (i) ADL task frequency from long-term low sampling frequency video and Internet of Things…
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Taxonomy
TopicsContext-Aware Activity Recognition Systems · Technology Use by Older Adults · Tracheal and airway disorders
