Towards Robust and Accurate Myoelectric Controller Design based on
Multi-objective Optimization using Evolutionary Computation
- URL: http://arxiv.org/abs/2204.02179v3
- Date: Mon, 22 May 2023 14:07:53 GMT
- Title: Towards Robust and Accurate Myoelectric Controller Design based on
Multi-objective Optimization using Evolutionary Computation
- Authors: Ahmed Aqeel Shaikh, Anand Kumar Mukhopadhyay, Soumyajit Poddar, and
Suman Samui
- Abstract summary: We have proposed an approach to design an energy-efficient EMG-based controller by considering a kernelized SVM classifier.
In order to achieve the optimized performance of the EMG-based controller, our main strategy of classifier design is to reduce the false movements of the overall system.
An elitist multi-objective evolutionary algorithm $-$ the non-dominated sorting genetic algorithm II (NSGA-II) has been used to tune the hyper parameters of SVM.
- Score: 0.22835610890984162
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Myoelectric pattern recognition is one of the important aspects in the design
of the control strategy for various applications including upper-limb
prostheses and bio-robotic hand movement systems. The current work has proposed
an approach to design an energy-efficient EMG-based controller by considering a
kernelized SVM classifier for decoding the information of surface
electromyography (sEMG) signals to infer the underlying muscle movements. In
order to achieve the optimized performance of the EMG-based controller, our
main strategy of classifier design is to reduce the false movements of the
overall system (when the EMG-based controller is at the `Rest' position). To
this end, we have formulated the training algorithm of the proposed supervised
learning system as a general constrained multi-objective optimization problem.
An elitist multi-objective evolutionary algorithm $-$ the non-dominated sorting
genetic algorithm II (NSGA-II) has been used to tune the hyperparameters of
SVM. We have presented the experimental results by performing the experiments
on a dataset consisting of the sEMG signals collected from eleven subjects at
five different upper limb positions. Furthermore, the performance of the
trained models based on the two-objective metrics, namely classification
accuracy, and false-negative have been evaluated on two different test sets to
examine the generalization capability of the proposed training approach while
implementing limb-position invariant EMG classification. It is evident from the
presented result that the proposed approach provides much more flexibility to
the designer in selecting the parameters of the classifier to optimize the
energy efficiency of the EMG-based controller.
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