Physical activity recognition plays a vital role in the application of wearable sensors in healthcare. This paper explores the capability of machine learning algorithms to recognise activities of healthy elderly adults and people with Parkinson's (PwP) using wearable sensor data. We examined the potential of triaxial accelerometer alone and with gyroscope for activity recognition. We employed a comprehensive study of several features and classifiers for recognising different activities. The random forest algorithm identified physical activities among elderly people and PwP with an accuracy of 92.29% when both accelerometer and gyroscope sensors used at the same time
Healthcare is moving rapidly from the long-standing reactive treatment approach to the early detecti...
Parkinson’s disease is a neurodegenerative disorder impacting patients’ movement, causing a variety ...
International audienceObjectives: This paper addresses the design of an ambulatory monitoring system...
Physical activity recognition plays a vital role in the application of wearable sensors in healthcar...
By 2050 two billion people will be aged 60 or older representing 22% of the global population. As th...
In the last few years, the importance of measuring gait characteristics has increased tenfold due to...
Our society exhibits a worldwide trait of a quickly growing cohort of patients with neurodegenerativ...
A population group that is often overlooked in the recent revolution of self-tracking is the group o...
Abstract Remote assessment of the gait of older adults (OAs) during daily living using wrist-worn s...
Abstract Background Wearable sensors have the potential to provide clinicians with access to motor p...
In the last few decades, life expectancy has been increasing. This has resulted in a higher proporti...
"Human activity recognition" is essential to the success of numerous real-world applications, such a...
Remote assessment of the gait of older adults (OAs) during daily living using wrist-worn sensors has...
Machine learning algorithms to classify activity type from wearable accelerometers are important to ...
Wearable devices offer the potential to track motor symptoms in neurological disorders. Kinematic da...
Healthcare is moving rapidly from the long-standing reactive treatment approach to the early detecti...
Parkinson’s disease is a neurodegenerative disorder impacting patients’ movement, causing a variety ...
International audienceObjectives: This paper addresses the design of an ambulatory monitoring system...
Physical activity recognition plays a vital role in the application of wearable sensors in healthcar...
By 2050 two billion people will be aged 60 or older representing 22% of the global population. As th...
In the last few years, the importance of measuring gait characteristics has increased tenfold due to...
Our society exhibits a worldwide trait of a quickly growing cohort of patients with neurodegenerativ...
A population group that is often overlooked in the recent revolution of self-tracking is the group o...
Abstract Remote assessment of the gait of older adults (OAs) during daily living using wrist-worn s...
Abstract Background Wearable sensors have the potential to provide clinicians with access to motor p...
In the last few decades, life expectancy has been increasing. This has resulted in a higher proporti...
"Human activity recognition" is essential to the success of numerous real-world applications, such a...
Remote assessment of the gait of older adults (OAs) during daily living using wrist-worn sensors has...
Machine learning algorithms to classify activity type from wearable accelerometers are important to ...
Wearable devices offer the potential to track motor symptoms in neurological disorders. Kinematic da...
Healthcare is moving rapidly from the long-standing reactive treatment approach to the early detecti...
Parkinson’s disease is a neurodegenerative disorder impacting patients’ movement, causing a variety ...
International audienceObjectives: This paper addresses the design of an ambulatory monitoring system...