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Electromyogram-Based Classification of Hand and Finger Gestures Using Artificial Neural Networks
by
Lee, Kyung Hyun
, Byun, Sangwon
, Min, Ji Young
in
Accuracy
/ Algorithms
/ Classification
/ Electrodes
/ electromyogram
/ Electromyography
/ EMG
/ gesture recognition
/ Gestures
/ Hand
/ hand-finger movement
/ Humans
/ Machine Learning
/ Neural networks
/ Neural Networks, Computer
/ physiological signal
/ Response time
/ Sensors
/ Support vector machines
2021
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Electromyogram-Based Classification of Hand and Finger Gestures Using Artificial Neural Networks
by
Lee, Kyung Hyun
, Byun, Sangwon
, Min, Ji Young
in
Accuracy
/ Algorithms
/ Classification
/ Electrodes
/ electromyogram
/ Electromyography
/ EMG
/ gesture recognition
/ Gestures
/ Hand
/ hand-finger movement
/ Humans
/ Machine Learning
/ Neural networks
/ Neural Networks, Computer
/ physiological signal
/ Response time
/ Sensors
/ Support vector machines
2021
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Do you wish to request the book?
Electromyogram-Based Classification of Hand and Finger Gestures Using Artificial Neural Networks
by
Lee, Kyung Hyun
, Byun, Sangwon
, Min, Ji Young
in
Accuracy
/ Algorithms
/ Classification
/ Electrodes
/ electromyogram
/ Electromyography
/ EMG
/ gesture recognition
/ Gestures
/ Hand
/ hand-finger movement
/ Humans
/ Machine Learning
/ Neural networks
/ Neural Networks, Computer
/ physiological signal
/ Response time
/ Sensors
/ Support vector machines
2021
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Electromyogram-Based Classification of Hand and Finger Gestures Using Artificial Neural Networks
Journal Article
Electromyogram-Based Classification of Hand and Finger Gestures Using Artificial Neural Networks
2021
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Overview
Electromyogram (EMG) signals have been increasingly used for hand and finger gesture recognition. However, most studies have focused on the wrist and whole-hand gestures and not on individual finger (IF) gestures, which are considered more challenging. In this study, we develop EMG-based hand/finger gesture classifiers based on fixed electrode placement using machine learning methods. Ten healthy subjects performed ten hand/finger gestures, including seven IF gestures. EMG signals were measured from three channels, and six time-domain (TD) features were extracted from each channel. A total of 18 features was used to build personalized classifiers for ten gestures with an artificial neural network (ANN), a support vector machine (SVM), a random forest (RF), and a logistic regression (LR). The ANN, SVM, RF, and LR achieved mean accuracies of 0.940, 0.876, 0.831, and 0.539, respectively. One-way analyses of variance and F-tests showed that the ANN achieved the highest mean accuracy and the lowest inter-subject variance in the accuracy, respectively, suggesting that it was the least affected by individual variability in EMG signals. Using only TD features, we achieved a higher ratio of gestures to channels than other similar studies, suggesting that the proposed method can improve the system usability and reduce the computational burden.
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