Ensuring the health and safety of senior citizens who live alone is a growing societal concern. The Activity of Daily Living (ADL) approach is a common means to monitor disease progression and the ability of these individuals to care for themselves. However, the prevailing sensor-based ADL monitoring systems primarily rely on wearable motion sensors, capture insufficient information for accurate ADL recognition, and do not provide a comprehensive understanding of ADLs at different granularities. Current healthcare IS and mobile analytics research focuses on studying the system, device, and provided services, and is in need of an end-to-end solution to comprehensively recognize ADLs based on mobile sensor data. This study adopts the design s...
Due to the life expectancy increase, there will be a workforce shortage in elderly care sector in fo...
The growth of IoT-based services in homes, cities, and factories creates value for individuals, indu...
Recently, egocentric activity recognition has attracted considerable attention in the pattern recogn...
Abstract: Physical activity has a strong influence on mental and physical health and is essential in...
Physical activity has a strong influence on mental and physical health and is essential in healthy a...
Chronic conditions, frailty, dementia, and other diseases or symptoms significantly affect senior ci...
We describe a novel technique to combine motion data with scene information to capture activity char...
Healthcare using body sensor data has been getting huge research attentions by a wide range of resea...
The world is facing an ageing population phenomenon, coupled with health and social problems, which ...
Advances in smart home technology and IoT devices has enabled us for monitoring of human activities ...
In this work we present A-Wristocracy, a novel framework for recognizing very fine-grained and compl...
Deep learning (DL) algorithms have substantially increased research in recognizing day-to-day human ...
from video can prove particularly useful in assisted living and smart home environments, as behavior...
This paper describes a methodology to optimize the home sensor network to measure the Activities of ...
Advancing the quality of healthcare for senior citizens with chronic conditions is of great social r...
Due to the life expectancy increase, there will be a workforce shortage in elderly care sector in fo...
The growth of IoT-based services in homes, cities, and factories creates value for individuals, indu...
Recently, egocentric activity recognition has attracted considerable attention in the pattern recogn...
Abstract: Physical activity has a strong influence on mental and physical health and is essential in...
Physical activity has a strong influence on mental and physical health and is essential in healthy a...
Chronic conditions, frailty, dementia, and other diseases or symptoms significantly affect senior ci...
We describe a novel technique to combine motion data with scene information to capture activity char...
Healthcare using body sensor data has been getting huge research attentions by a wide range of resea...
The world is facing an ageing population phenomenon, coupled with health and social problems, which ...
Advances in smart home technology and IoT devices has enabled us for monitoring of human activities ...
In this work we present A-Wristocracy, a novel framework for recognizing very fine-grained and compl...
Deep learning (DL) algorithms have substantially increased research in recognizing day-to-day human ...
from video can prove particularly useful in assisted living and smart home environments, as behavior...
This paper describes a methodology to optimize the home sensor network to measure the Activities of ...
Advancing the quality of healthcare for senior citizens with chronic conditions is of great social r...
Due to the life expectancy increase, there will be a workforce shortage in elderly care sector in fo...
The growth of IoT-based services in homes, cities, and factories creates value for individuals, indu...
Recently, egocentric activity recognition has attracted considerable attention in the pattern recogn...