Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/27776
Title: Using neural networks for simultaneous and proportional estimation of upper arm kinematics
Authors: Grech, Christian
Camilleri, Tracey A.
Bugeja, Marvin K.
Keywords: Neural networks (Computer science)
Electromyography
Kinematics
Issue Date: 2017-07
Publisher: Institute of Electrical and Electronics Engineers Inc.
Citation: Grech, C., Camilleri, T., & Bugeja, M. (2017). Using neural networks for simultaneous and proportional estimation of upper arm kinematics. 25th Mediterranean Conference on Control and Automation, MED 2017, Valletta. 247-252.
Abstract: This work compares the use of three different artificial neural networks (ANNs) to estimate shoulder and elbow kinematics using surface electromyographic (EMG) signals for proportional and simultaneous control of multiple degrees of freedom (DOFs). The three different networks considered include a multilayer perceptron (MLP) neural network, a time delay neural network (TDNN), and a recurrent neural network (RNN). In each case, surface EMG signals from agonist and antagonist arm muscles detected during seven different movements, three of which involve the simultaneous activation of the shoulder and elbow, were used as inputs to the neural networks. The three configurations were trained to estimate angular displacements of the shoulder and/or elbow. The average correlation coefficient (CC) between the true and the estimated angular position for simultaneous movements for the elbow and shoulder combined was 0.866 ± 0.050 when using the MLP structure, 0.830 ± 0.130 for the TDNN structure and 0.840 ± 0.058 when using the RNN architecture. These results show that all three neural networks are plausible alternatives to model the EMG to joint angle relationship of the upper arm with the MLP being the most computationally efficient option.
URI: https://www.um.edu.mt/library/oar//handle/123456789/27776
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Scholarly Works - FacICTMN

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