Deep Learning for Human Locomotion Analysis in Lower-Limb Exoskeletons: A Comparative Study
By: Omar Coser , Christian Tamantini , Matteo Tortora and more
Potential Business Impact:
Helps leg braces understand the ground.
Wearable robotics for lower-limb assistance have become a pivotal area of research, aiming to enhance mobility for individuals with physical impairments or augment the performance of able-bodied users. Accurate and adaptive control systems are essential to ensure seamless interaction between the wearer and the robotic device, particularly when navigating diverse and dynamic terrains. Despite the recent advances in neural networks for time series analysis, no attempts have been directed towards the classification of ground conditions, categorized into five classes and subsequently determining the ramp's slope and stair's height. In this respect, this paper presents an experimental comparison between eight deep neural network backbones to predict high-level locomotion parameters across diverse terrains. All the models are trained on the publicly available CAMARGO 2021 dataset. IMU-only data equally or outperformed IMU+EMG inputs, promoting a cost-effective and efficient design. Indeeds, using three IMU sensors, the LSTM achieved high terrain classification accuracy (0.94 +- 0.04) and precise ramp slope (1.95 +- 0.58{\deg}) and the CNN-LSTM a stair height (15.65 +- 7.40 mm) estimations. As a further contribution, SHAP analysis justified sensor reduction without performance loss, ensuring a lightweight setup. The system operates with ~2 ms inference time, supporting real-time applications. The code is code available at https://github.com/cosbidev/Human-Locomotion-Identification.
Similar Papers
Human Locomotion Implicit Modeling Based Real-Time Gait Phase Estimation
Robotics
Helps robot legs learn your walking style.
Attention-Based Convolutional Neural Network Model for Human Lower Limb Activity Recognition using sEMG
Robotics
Helps robots understand leg movements for better help.
Robust Humanoid Walking on Compliant and Uneven Terrain with Deep Reinforcement Learning
Robotics
Robots learn to walk on bumpy, soft ground.