This paper presents an innovative multi-resident activity detection sensor network that uses the Bluetooth Low Energy (BLE) signal emitted by tags worn by residents and passive infrared (PIR) motion sensors deployed in the house to locate residents and monitor their activities. This measurement system solves the problem of monitoring older people and measuring their activities in multi-resident scenarios. Metrics are defined to analyze and interpret the collected data to understand daily habits and measure the activity level (AL) of older people. The accuracy of the system in detecting movements and discriminating residents is measured. As the sensor-to-person distance increases, the system decreases its ability to detect small movements, w...
People detection is widely used in remote health monitoring and smart homes. Passive infrared (PIR) ...
The elderly population is experiencing high growth in most countries. In Malaysia, a majority of th...
Elderly activity detection is one of the significant applications in machine learning. A supportive ...
This paper presents an innovative multi-resident activity detection sensor network that uses the Blu...
The indoor localization of older people (> 65 years old) can address the challenges for the creation...
The number of older people is increasing in many countries. By 2030, it is estimated that 15% of the...
The number of older people is increasing in many countries. By 2030, it is estimated that 15% of the...
Abstract — Existing surveillance systems for older people activity analysis are focused on video and...
The motion sensor technology and the network of cameras have been explored separately as attractive ...
As the elderly population increases, more elderly persons are living alone. The well-being of the el...
A proliferating interest has been observed over the past years in the development of an accurate sys...
Smart homes for the aging population have recently started attracting the attention of the research ...
Abstract from public.pdf.[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT AUTHOR'S REQUEST.] Rese...
This paper presents a multimodal system for seamless surveillance of elderly people in their living ...
AbstractThe age span of elder people is increasing and this trend may continue in near future. Elder...
People detection is widely used in remote health monitoring and smart homes. Passive infrared (PIR) ...
The elderly population is experiencing high growth in most countries. In Malaysia, a majority of th...
Elderly activity detection is one of the significant applications in machine learning. A supportive ...
This paper presents an innovative multi-resident activity detection sensor network that uses the Blu...
The indoor localization of older people (> 65 years old) can address the challenges for the creation...
The number of older people is increasing in many countries. By 2030, it is estimated that 15% of the...
The number of older people is increasing in many countries. By 2030, it is estimated that 15% of the...
Abstract — Existing surveillance systems for older people activity analysis are focused on video and...
The motion sensor technology and the network of cameras have been explored separately as attractive ...
As the elderly population increases, more elderly persons are living alone. The well-being of the el...
A proliferating interest has been observed over the past years in the development of an accurate sys...
Smart homes for the aging population have recently started attracting the attention of the research ...
Abstract from public.pdf.[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT AUTHOR'S REQUEST.] Rese...
This paper presents a multimodal system for seamless surveillance of elderly people in their living ...
AbstractThe age span of elder people is increasing and this trend may continue in near future. Elder...
People detection is widely used in remote health monitoring and smart homes. Passive infrared (PIR) ...
The elderly population is experiencing high growth in most countries. In Malaysia, a majority of th...
Elderly activity detection is one of the significant applications in machine learning. A supportive ...