Abstract The purpose of this study was to develop and validate an algorithm for classifying physical activity (PA) classes and sedentary behavior (SED) from raw acceleration signal measured from hip. Twenty-two adult volunteers completed a pre-defined set of controlled and supervised activities. The activities included nine daily PAs. The participants performed PA trials while wearing a hip-worn 3D accelerometer. Indirect calorimetry was used for measuring energy expenditure. The raw acceleration data were used for training and testing a prediction model in MATLAB environment. The prediction model was built using bagged trees classifier and the most suitable extracted features (mean, maximum, minimum, zero crossing rate, and mean amplitude...
Physical inactivity significantly impacts personal health, reduces quality of life, and often leads ...
Introduction: Sedentary behavior has been suggested as an independent risk factor for ill-health, wi...
Abstract — Automatic recognition of activities using time se-ries data collected from exercise can f...
This study developed and evaluated machine learning algorithms to predict children’s physical activi...
Background:; Physical activity (PA) is paramount for human health and well-being. However, there is ...
Background: Physical activity (PA) is paramount for human health and well-being. However, there is a...
Hip-worn triaxial accelerometers are widely used to assess physical activity in terms of energy expe...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
International audience"Objective” methods to monitorphysical activity and sedentary patterns in free...
Physical behaviors (e.g., physical activity and sedentary behavior) have been the focus among many r...
Abstract: Recognizing human activity is very useful for an investigator about a patient's behavior ...
© 2001-2012 IEEE. Recognizing human activity is very useful for an investigator about a patient's be...
Effective classification of physical exercises allows individuals to assess their levels of physical...
Physical inactivity significantly impacts personal health, reduces quality of life, and often leads ...
Introduction: Sedentary behavior has been suggested as an independent risk factor for ill-health, wi...
Abstract — Automatic recognition of activities using time se-ries data collected from exercise can f...
This study developed and evaluated machine learning algorithms to predict children’s physical activi...
Background:; Physical activity (PA) is paramount for human health and well-being. However, there is ...
Background: Physical activity (PA) is paramount for human health and well-being. However, there is a...
Hip-worn triaxial accelerometers are widely used to assess physical activity in terms of energy expe...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
The evaluation of the effectiveness of different machine learning algorithms on a publicly available...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
International audience"Objective” methods to monitorphysical activity and sedentary patterns in free...
Physical behaviors (e.g., physical activity and sedentary behavior) have been the focus among many r...
Abstract: Recognizing human activity is very useful for an investigator about a patient's behavior ...
© 2001-2012 IEEE. Recognizing human activity is very useful for an investigator about a patient's be...
Effective classification of physical exercises allows individuals to assess their levels of physical...
Physical inactivity significantly impacts personal health, reduces quality of life, and often leads ...
Introduction: Sedentary behavior has been suggested as an independent risk factor for ill-health, wi...
Abstract — Automatic recognition of activities using time se-ries data collected from exercise can f...