The goal of this study is to address two major issues that undermine the large scale deployment of smart home sensing solutions in people’s homes. These include the costs associated with having to install and maintain a large number of sensors, and the pragmatics of annotating numerous sensor data streams for activity classification. Our aim was therefore to propose a method to describe individual users’ behavioural patterns starting from unannotated data analysis of a minimal number of sensors and a ”blind” approach for activity recognition. The methodology included processing and analysing sensor data from 17 older adults living in community-based housing to extract activity information at different times of the day. The findings illustra...
A fair amount of research on smart home functions has aimed at assisting older adults in their every...
Human activity detection within smart homes is one of the basis of unobtrusive wellness monitoring o...
The objective is to detect activities taking place in a home and to create a model of behavior for t...
The goal of this study is to address two major issues that undermine the large scale deployment of s...
© 2020, The Author(s). This paper investigates the utility of unsupervised machine learning and data...
The aim of this research is to measure and cluster the activity of ageing people, through a minimall...
With the rapid development in sensing technology, data mining, and machine learning fields for human...
Understanding home activities is important in social research to study aspects of home life, e.g., e...
This paper proposes the fusion of Unobtrusive Sensing Solutions (USSs) for human Activity Recognitio...
Understanding human behavior can assist in the adoption of satisfactory health interventions and imp...
Environmental sensors are exploited in smart homes for many purposes. Sensor data inherently carries...
Supporting older people, many of whom live with chronic conditions or cognitive and physical impairm...
Smart homes for the aging population have recently started attracting the attention of the research ...
A fair amount of research on smart home functions has aimed at assisting older adults in their every...
Human activity detection within smart homes is one of the basis of unobtrusive wellness monitoring o...
The objective is to detect activities taking place in a home and to create a model of behavior for t...
The goal of this study is to address two major issues that undermine the large scale deployment of s...
© 2020, The Author(s). This paper investigates the utility of unsupervised machine learning and data...
The aim of this research is to measure and cluster the activity of ageing people, through a minimall...
With the rapid development in sensing technology, data mining, and machine learning fields for human...
Understanding home activities is important in social research to study aspects of home life, e.g., e...
This paper proposes the fusion of Unobtrusive Sensing Solutions (USSs) for human Activity Recognitio...
Understanding human behavior can assist in the adoption of satisfactory health interventions and imp...
Environmental sensors are exploited in smart homes for many purposes. Sensor data inherently carries...
Supporting older people, many of whom live with chronic conditions or cognitive and physical impairm...
Smart homes for the aging population have recently started attracting the attention of the research ...
A fair amount of research on smart home functions has aimed at assisting older adults in their every...
Human activity detection within smart homes is one of the basis of unobtrusive wellness monitoring o...
The objective is to detect activities taking place in a home and to create a model of behavior for t...