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EMG- BASED HAND GESTURE RECOGNITION USING DEEP LEARNING AND SIGNAL-TO-IMAGE CONVERSION TOOLS


SABRINA AKTER, BIMAL KUMAR PRAMANIK, MD EKRAMUL HAMID *
Department of Computer Science and Engineering, University of Rajshahi, Rajshahi-6205, Bangladesh
* Corresponding author, email: ekram_hamid@ru.ac.bd

Issue:

JESR, Number 2, Volume XXIX

Section:

Issue Nr. 2 - Volume 29(2023)

Abstract:

In this paper, deep learning-based hand gesture recognition using surface EMG signals is presented. We use Principal component analysis (PCA) to reduce the data set. Here a threshold-based approach is also proposed to select the principal components (PCs). Then the Continuous wavelet transform (CWT) is carried out to prepare the time-frequency representation of images which is used as the input of the classifier. A very deep convolutional neural network (CNN) is proposed as the gesture classifier. The classifier is trained on 10-fold cross-validation framework and we achieve average recognition accuracy of 99.44%, sensitivity of 97.78% and specificity of 99.68% respectively.

Keywords:

EMG, deep learning, CWT, PCA, hand gesture recognition.

Code [ID]:

JESR202302V29S01A0001 [0005549]

Note:

Full paper:

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