Gait speed is an important parameter to characterize people's daily mobility. For real-world speed measurement, inertial sensors or Global Navigation Satellite System (GNSS) can be used on wrist, possibly integrated in a wristwatch. However, power consumption of GNSS is high and data are only available outdoor. Gait speed estimation using wrist-mounted inertial sensors is generally based on machine learning and suffers from low accuracy due to the inadequacy of using limited training data to build a general speed model that would be accurate for the whole population. To overcome this issue, a personalized model was proposed, which took unique gait style of each subject into account. Cadence and other biomechanically-derived gait features we...
Self-selected walking speed is an important measure of ambulation ability used in various clinical g...
Gait speed is a reliable outcome measure across multiple diagnoses, recognized as the 6th vital sign...
Wearable devices are able to capture movement-related characteristics from inertial sensors integrat...
Mobility concerns most daily tasks (e.g., householding, shopping), affecting life quality. Gait spee...
Gait bouts (GB), as a prominent indication of physical activity, contain valuable fundamental inform...
Walking speed is widely used to study human health status. Wearable inertial measurement units (IMU)...
Walking/gait speed is a key measure for daily mobility characterization. To date, various studies ha...
The overground speed is a key component of running analysis. Today, most speed estimation wearable s...
Gait speed is a reliable outcome measure across multiple diagnoses, recognized as the 6th vital sign...
open7siThis work was supported by the European Union’s Horizon 2020 Research and Innovation Programm...
Walking speed is an important clinical parameter because it sums up the ability to move and predicts...
Abstract-Walking speed is an important determinant of energy expenditure. We present the use of Gaus...
In this paper we implemented machine learning (ML) and strap-down integration (SDI) methods and anal...
Gait impairments are among the most disabling symptoms in several musculoskeletal and neurological c...
Walking is a central activity of daily life, and there is an increasing demand for objective measure...
Self-selected walking speed is an important measure of ambulation ability used in various clinical g...
Gait speed is a reliable outcome measure across multiple diagnoses, recognized as the 6th vital sign...
Wearable devices are able to capture movement-related characteristics from inertial sensors integrat...
Mobility concerns most daily tasks (e.g., householding, shopping), affecting life quality. Gait spee...
Gait bouts (GB), as a prominent indication of physical activity, contain valuable fundamental inform...
Walking speed is widely used to study human health status. Wearable inertial measurement units (IMU)...
Walking/gait speed is a key measure for daily mobility characterization. To date, various studies ha...
The overground speed is a key component of running analysis. Today, most speed estimation wearable s...
Gait speed is a reliable outcome measure across multiple diagnoses, recognized as the 6th vital sign...
open7siThis work was supported by the European Union’s Horizon 2020 Research and Innovation Programm...
Walking speed is an important clinical parameter because it sums up the ability to move and predicts...
Abstract-Walking speed is an important determinant of energy expenditure. We present the use of Gaus...
In this paper we implemented machine learning (ML) and strap-down integration (SDI) methods and anal...
Gait impairments are among the most disabling symptoms in several musculoskeletal and neurological c...
Walking is a central activity of daily life, and there is an increasing demand for objective measure...
Self-selected walking speed is an important measure of ambulation ability used in various clinical g...
Gait speed is a reliable outcome measure across multiple diagnoses, recognized as the 6th vital sign...
Wearable devices are able to capture movement-related characteristics from inertial sensors integrat...