Periodicities (repeating patterns) are observed in many human behaviors. Their strength may capture untapped patterns that incorporate sleep, sedentary, and active behaviors into a single metric indicative of better health. We present a framework to detect periodicities from longitudinal wrist-worn accelerometry data. GENEActiv accelerometer data were collected from 20 participants (17 men, 3 women, aged 35–65) continuously for (range: 13.9 to 102.0) consecutive days. Cardiometabolic risk biomarkers and health-related quality of life metrics were assessed at baseline. Periodograms were constructed to determine patterns emergent from the accelerometer data. Periodicity strength was calculated using circular autocorrelations for time-lagged w...
Periodic phenomena or oscillating signals can be found frequently in nature and recent research has ...
Abstract Physical activity (PA) and sedentary time (SED) are associated with the risk of cardiovasc...
Long-term monitoring for activity recognition opens up new possibilities for deriving characteristic...
Periodicities (repeating patterns) are observed in many human behaviors. Their strength may capture ...
abstract: Periodicities (repeating patterns) are observed in many human behaviors. Their strength ma...
Develop a framework for identifying meaningful periodicities (i.e., repeating patterns) and the stre...
This paper introduces a new way to analyse and visualize quantified-self or lifelog data captured f...
Background:Physical activity and sleep are lifestyle behaviours associated with health and well-bein...
Summary: Millions of wearable-device users record their heart rate (HR) and activity. We introduce a...
Periodic phenomena are oscillating signals found in many naturally-occurring time series. A periodo...
This study condenses huge amount of raw data measured from a MEMS accelerometer-based, wrist-worn de...
Introduction: Objective methods like accelerometers are feasible for large studies and may quantify ...
Traditional methods of collecting information about human behavior in the free-living environment ha...
24-hour actigraphy data collected by wearable devices offer valuable insights into physical activity...
Continuously-worn wearable sensors enable researchers to collect copious amounts of rich bio-behavio...
Periodic phenomena or oscillating signals can be found frequently in nature and recent research has ...
Abstract Physical activity (PA) and sedentary time (SED) are associated with the risk of cardiovasc...
Long-term monitoring for activity recognition opens up new possibilities for deriving characteristic...
Periodicities (repeating patterns) are observed in many human behaviors. Their strength may capture ...
abstract: Periodicities (repeating patterns) are observed in many human behaviors. Their strength ma...
Develop a framework for identifying meaningful periodicities (i.e., repeating patterns) and the stre...
This paper introduces a new way to analyse and visualize quantified-self or lifelog data captured f...
Background:Physical activity and sleep are lifestyle behaviours associated with health and well-bein...
Summary: Millions of wearable-device users record their heart rate (HR) and activity. We introduce a...
Periodic phenomena are oscillating signals found in many naturally-occurring time series. A periodo...
This study condenses huge amount of raw data measured from a MEMS accelerometer-based, wrist-worn de...
Introduction: Objective methods like accelerometers are feasible for large studies and may quantify ...
Traditional methods of collecting information about human behavior in the free-living environment ha...
24-hour actigraphy data collected by wearable devices offer valuable insights into physical activity...
Continuously-worn wearable sensors enable researchers to collect copious amounts of rich bio-behavio...
Periodic phenomena or oscillating signals can be found frequently in nature and recent research has ...
Abstract Physical activity (PA) and sedentary time (SED) are associated with the risk of cardiovasc...
Long-term monitoring for activity recognition opens up new possibilities for deriving characteristic...