Due to a lack of transparency in both algorithm and validation methodology, it is difficult for researchers and clinicians to select the appropriate tracker for their application. The aim of this work is to transparently present an adjustable physical activity classification algorithm that discriminates between dynamic, standing, and sedentary behavior. By means of easily adjustable parameters, the algorithm performance can be optimized for applications using different target populations and locations for tracker wear. Concerning an elderly target population with a tracker worn on the upper leg, the algorithm is optimized and validated under simulated free-living conditions. The fixed activity protocol (FAP) is performed by 20 participants;...
Increasing the amount of physical activity (PA) in older adults that have shifted to a sedentary lif...
Activity level and gait parameters during daily life are important indicators for clinicians because...
Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact r...
Due to a lack of transparency in both algorithm and validation methodology, it is difficult for rese...
Due to a lack of transparency in both algorithm and validation methodology, it is diffcult for resea...
Purpose: The purpose of this study was to validate optimized algorithm parameter settings for step c...
Low amounts of physical activity (PA) and prolonged periods of sedentary activity are common in hosp...
Physical activity is strongly linked with mental and physical health in the elderly population and a...
Quantifying daily physical activity in older adults can provide relevant monitoring and diagnostic i...
Physical activity is an important determinant of health and well-being in older persons and contribu...
The popularity of using wearable inertial sensors for physical activity classification has dramatica...
Quantifying daily physical activity in older adults can provide relevant monitoring and diagnostic i...
Machine learning algorithms to classify activity type from wearable accelerometers are important to ...
Physical activity is an important determinant of health and well-being in older persons and contribu...
Increasing the amount of physical activity (PA) in older adults that have shifted to a sedentary lif...
Activity level and gait parameters during daily life are important indicators for clinicians because...
Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact r...
Due to a lack of transparency in both algorithm and validation methodology, it is difficult for rese...
Due to a lack of transparency in both algorithm and validation methodology, it is diffcult for resea...
Purpose: The purpose of this study was to validate optimized algorithm parameter settings for step c...
Low amounts of physical activity (PA) and prolonged periods of sedentary activity are common in hosp...
Physical activity is strongly linked with mental and physical health in the elderly population and a...
Quantifying daily physical activity in older adults can provide relevant monitoring and diagnostic i...
Physical activity is an important determinant of health and well-being in older persons and contribu...
The popularity of using wearable inertial sensors for physical activity classification has dramatica...
Quantifying daily physical activity in older adults can provide relevant monitoring and diagnostic i...
Machine learning algorithms to classify activity type from wearable accelerometers are important to ...
Physical activity is an important determinant of health and well-being in older persons and contribu...
Increasing the amount of physical activity (PA) in older adults that have shifted to a sedentary lif...
Activity level and gait parameters during daily life are important indicators for clinicians because...
Accurate monitoring of sedentary behaviour and physical activity is key to investigate their exact r...