IMU-based Real-Time Crutch Gait Phase and Step Detections in Lower-Limb Exoskeletons
By: Anis R. Shakkour , David Hexner , Yehuda Bitton and more
Potential Business Impact:
Lets crutches help people walk better.
Lower limb exoskeletons and prostheses require precise, real time gait phase and step detections to ensure synchronized motion and user safety. Conventional methods often rely on complex force sensing hardware that introduces control latency. This paper presents a minimalist framework utilizing a single, low cost Inertial-Measurement Unit (IMU) integrated into the crutch hand grip, eliminating the need for mechanical modifications. We propose a five phase classification system, including standard gait phases and a non locomotor auxiliary state, to prevent undesired motion. Three deep learning architectures were benchmarked on both a PC and an embedded system. To improve performance under data constrained conditions, models were augmented with a Finite State Machine (FSM) to enforce biomechanical consistency. The Temporal Convolutional Network (TCN) emerged as the superior architecture, yielding the highest success rates and lowest latency. Notably, the model generalized to a paralyzed user despite being trained exclusively on healthy participants. Achieving a 94% success rate in detecting crutch steps, this system provides a high performance, cost effective solution for real time exoskeleton control.
Similar Papers
Human Locomotion Implicit Modeling Based Real-Time Gait Phase Estimation
Robotics
Helps robot legs learn your walking style.
Towards Data-Driven Adaptive Exoskeleton Assistance for Post-stroke Gait
Robotics
Adapts exoskeletons to ease stroke patients' walking
Feature Matching-Based Gait Phase Prediction for Obstacle Crossing Control of Powered Transfemoral Prosthesis
Robotics
Helps fake legs step over things better.