Low-Cost Automatic Ambient Assisted Living system

View/ Open
Date
2018-03Abstract
The recent increase in ageing population in countries around the world has brought a lot of attention toward research and development of ambient assisted living (AAL) systems. These systems should be inexpensive to be installed in elderly homes, protecting their privacy and more importantly being non-invasive and smart. In this paper, we introduce an inexpensive system that utilises off-the-shelf sensor to grab RGB-D data. This data is then fed into different learning algorithms for classification different activity types. We achieve a very good success rate (99.9%) for human activity recognition (HAR) with the help of light-weighted and fast random forests (RF).
Description
The file attached to this record is the author's final peer reviewed version.
Citation : Malekmohamadi, H. et al. (2018) Low-Cost Automatic Ambient Assisted Living System. SmarterAAL'18, IEEE International Conference on Pervasive Computing and Communication (PerCom), Athens, March 2018.
Research Group : Centre for Computational Intelligence
Research Institute : Institute of Artificial Intelligence (IAI)
Research Institute : Leicester Institute for Pharmaceutical Innovation - From Molecules to Practice (LIPI)
Research Institute : Leicester Institute for Pharmaceutical Innovation - From Molecules to Practice (LIPI)
Peer Reviewed : Yes