Purpose: State-of-the-art methods for recognizing human activity using raw data from body-worn accelerometers have primarily been validated with data collected from adults. This study applies a previously available method for activity classification using wrist or ankle accelerometer to data sets collected from both adults and youth. Methods: An algorithm for detecting activity from wrist-worn accelerometers, originally developed using data from 33 adults, is tested on a data set of 20 youth (age, 13 ± 1.3 yr). The algorithm is also extended by adding new features required to improve performance on the youth data set. Subsequent tests on both the adult and youth data were performed using crossed tests (training on one group and testing on t...
PURPOSE: Pattern recognition approaches to accelerometer data processing have emerged as viable alte...
Abstract: Recognizing human activity is very useful for an investigator about a patient's behavior ...
In 2017, the European Commission estimated that 29% of European population will be aged 65 and over,...
Purpose: State-of-the-art methods for recognizing human activity using raw data from body-worn accel...
PURPOSE: Large physical activity surveillance projects such as the UK Biobank and NHANES are using w...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
Background Few algorithms are available for detection and classification of physical activity (PA) t...
Objectives: Recognising human activity is very useful for an investigator about a patient's behaviou...
Physical behaviors (e.g., physical activity and sedentary behavior) have been the focus among many r...
Background: Wrist worn accelerometers are convenient to wear and provide greater compliance. However...
PURPOSE: The primary aim of this study was to examine the accuracy of a hip (Evenson algorithm) and ...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
PURPOSE: The purpose of this study is two-fold: 1) to determine if using gyroscope sensor data in pl...
PURPOSE: Pattern recognition approaches to accelerometer data processing have emerged as viable alte...
Abstract: Recognizing human activity is very useful for an investigator about a patient's behavior ...
In 2017, the European Commission estimated that 29% of European population will be aged 65 and over,...
Purpose: State-of-the-art methods for recognizing human activity using raw data from body-worn accel...
PURPOSE: Large physical activity surveillance projects such as the UK Biobank and NHANES are using w...
Problem addressed Wrist-worn accelerometers are associated with greater compliance. However, validat...
Background Few algorithms are available for detection and classification of physical activity (PA) t...
Objectives: Recognising human activity is very useful for an investigator about a patient's behaviou...
Physical behaviors (e.g., physical activity and sedentary behavior) have been the focus among many r...
Background: Wrist worn accelerometers are convenient to wear and provide greater compliance. However...
PURPOSE: The primary aim of this study was to examine the accuracy of a hip (Evenson algorithm) and ...
Inter-subject variability in accelerometer-based activity recognition may significantly affect class...
PURPOSE: The purpose of this study is two-fold: 1) to determine if using gyroscope sensor data in pl...
PURPOSE: Pattern recognition approaches to accelerometer data processing have emerged as viable alte...
Abstract: Recognizing human activity is very useful for an investigator about a patient's behavior ...
In 2017, the European Commission estimated that 29% of European population will be aged 65 and over,...