Home /Research /Estimation of continuous multi-DOF finger joint kinematics from surface EMG using a multi-output Gaussian Process
LEARNING

Estimation of continuous multi-DOF finger joint kinematics from surface EMG using a multi-output Gaussian Process

Jimson Ngeo, Tomoya Tamei, Tomohiro Shibata

Year
2014
Citations
22

Abstract

Surface electromyographic (EMG) signals have often been used in estimating upper and lower limb dynamics and kinematics for the purpose of controlling robotic devices such as robot prosthesis and finger exoskeletons. However, in estimating multiple and a high number of degrees-of-freedom (DOF) kinematics from EMG, output DOFs are usually estimated independently. In this study, we estimate finger joint kinematics from EMG signals using a multi-output convolved Gaussian Process (Multi-output Full GP) that considers dependencies between outputs. We show that estimation of finger joints from muscle activation inputs can be improved by using a regression model that considers inherent coupling or correlation within the hand and finger joints. We also provide a comparison of estimation performance between different regression methods, such as Artificial Neural Networks (ANN) which is used by many of the related studies. We show that using a multi-output GP gives improved estimation compared to multi-output ANN and even dedicated or independent regression models.

Keywords

KinematicsExoskeletonComputer scienceGaussian processDegrees of freedom (physics and chemistry)Joint (building)Artificial intelligenceArtificial neural networkControl theory (sociology)Gaussian

Related papers

Browse all LEARNING papers