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Real-Time Gait Event Detection with Adaptive Frequency Oscillators From a Single Head-Mounted IMU

Matej Tomc, Zlatko Matjačić

Year
2023
Citations
13
Access
Open access

Abstract

Accurate real-time gait event detection is the basis for the development of new gait rehabilitation techniques, especially when utilizing robotics or virtual reality (VR). The recent emergence of affordable wearable technologies, especially inertial measurement units (IMUs), has brought forth various new methods and algorithms for gait analysis. In this paper, we highlight some advantages of using adaptive frequency oscillators (AFOs) over traditional gait event detection algorithms, implemented a real-time AFO-based algorithm that estimates the gait phase from a single head-mounted IMU, and validated our method on a group of healthy subjects. Gait event detection was accurate at two different walking speeds. The method was reliable for symmetric, but not asymmetric gait patterns. Our method could prove especially useful in VR applications since a head-mounted IMU is already an integral part of commercial VR products.

Keywords

Inertial measurement unitGaitWearable computerComputer scienceEvent (particle physics)Artificial intelligenceGait analysisComputer visionSimulationReal-time computing

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