Publication | Closed Access
Real-Time Intended Knee Joint Motion Prediction by Deep-Recurrent Neural Networks
98
Citations
25
References
2019
Year
Neural ControlNeural Networks (Machine Learning)Human Pose Estimation3D Pose EstimationNeural NetworkMovement BiomechanicsComputational ComplexityOrthopaedic SurgeryRecurrent Neural NetworkMovement AnalysisKinesiologyOsteoarthritisKnee Joint AngleKinematicsHuman MotionRehabilitation EngineeringHealth SciencesMachine SystemsMotion SynthesisRehabilitationNeural Networks (Computational Neuroscience)Deep LearningElectromyographyDeep-recurrent Neural NetworksHuman MovementMedicine
Human-assisting intelligent systems demand certain methods to precisely predict motorized limb joint angles. This paper presents the application of deep-recurrent neural networks (RNNs), which is a type of neural network for processing sequential data, for predicting the knee joint angle in real-time. This model is created based on a combination of electromyographic (EMG) signals, (with electrodes being placed on three leg muscles), and inertial measurements of the upper and lower legs. The data collected from different subjects when they performed different gaits were used to construct the model, which was evaluated in a real-time setting. The proposed RNN model based on fusion information contains a balance between computational complexity and prediction accuracy. Results on a microcontroller show that, within a predicted horizon of 50 ms, the model has a low prediction error of ±2.93 degrees.
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