The use of wearable sensors allows continuous recordings of physical activity from participants in free-living or at-home clinical studies. The large amount of data collected demands automatic analysis pipelines to extract gait parameters that can be used as clinical endpoints. We introduce a deep learning-based automatic pipeline for wearables that processes tri-axial accelerometry data and extracts gait events—bout segmentation, initial contact (IC), and final contact (FC)—from a single sensor located at either the lower back (near L5), shin or wrist. The gait events detected are posteriorly used for gait parameter estimation, such as step time, length, and symmetry. We report results from a leave-one-subject-out (LOSO) validation on a pi...
Background Gait impairments are among the most common and impactful symptoms of Park...
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly ob...
Remote assessment of the gait of older adults (OAs) during daily living using wrist-worn sensors has...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...
Wearable technology for the automatic detection of gait events has recently gained growing interest,...
ait is the manner of walking in people and one of the basic functions for humans to move purposefull...
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly ob...
Gait - how someone walks - is considered the ‘sixth vital sign’ of health. This is because poor gait...
Monitoring gait quality in daily activities through wearable sensors has the potential to improve me...
The pervasiveness of wearable sensors has contributed to plenty of daily activity data and greatly i...
Monitoring gait quality in daily activities through wearable sensors has the potential to improve me...
Movement monitoring in patients with Parkinson’s disease (PD) is critical for quantifying disease pr...
Many algorithms use 3D accelerometer and/or gyroscope data from inertial measurement unit (IMU) sens...
Abstract Digital technologies provide the opportunity to analyze gait patterns in patients with Par...
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly ob...
Background Gait impairments are among the most common and impactful symptoms of Park...
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly ob...
Remote assessment of the gait of older adults (OAs) during daily living using wrist-worn sensors has...
The use of wearable sensors allows continuous recordings of physical activity from participants in f...
Wearable technology for the automatic detection of gait events has recently gained growing interest,...
ait is the manner of walking in people and one of the basic functions for humans to move purposefull...
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly ob...
Gait - how someone walks - is considered the ‘sixth vital sign’ of health. This is because poor gait...
Monitoring gait quality in daily activities through wearable sensors has the potential to improve me...
The pervasiveness of wearable sensors has contributed to plenty of daily activity data and greatly i...
Monitoring gait quality in daily activities through wearable sensors has the potential to improve me...
Movement monitoring in patients with Parkinson’s disease (PD) is critical for quantifying disease pr...
Many algorithms use 3D accelerometer and/or gyroscope data from inertial measurement unit (IMU) sens...
Abstract Digital technologies provide the opportunity to analyze gait patterns in patients with Par...
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly ob...
Background Gait impairments are among the most common and impactful symptoms of Park...
Distinct gait characteristics like short steps and shuffling gait are prototypical signs commonly ob...
Remote assessment of the gait of older adults (OAs) during daily living using wrist-worn sensors has...