Perbandingan Antara Domain Waktu dan Frekuensi untuk Pengenalan Sinyal EMG

Daniel Pamungkas, Sumantri R Kurniawan, Benrico F Simamora

Abstract


One way to recognize hand gestures is to use signal electromyography (EMG). The processed signal can use the time domain, frequency domain, or a mixture of the two domains. Meanwhile, the classification method that is widely used recently is the classification of Artificial Neural Networks (ANN). This paper presents a comparison study between time domains with frequency domain for EMG signals using ANN classification. This comparison aims to find out a better method for controlling the hand robot. The time domain features are root mean square (RMS) of the signal, while the signal’s octave band becomes a feature of the frequency domain. The EMG signals were obtained from the subject with eight fingers gestures. The results of this classification are used to control the robot’s hand. The success of each method in recognizing hand movements was counted. In addition, the response speed of the robot in changing positions is measured. The results showed that features using the frequency domain had a higher percentage of success than another domain. But the speed and memory used then the system using signals in the time domain is better.


Keywords


classification; electromyography; frequency domain; time domain; neural network

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References


G. Eason, B. Noble, and I. N. Sneddon, “On certain integrals of Lipschitz-Hankel type involving products of Bessel functions,” Phil. Trans. Roy. Soc. London, vol. A247, pp. 529–551, April 1955.

Montoya, Maria & Henao, O. & Muñoz, John. (2017). Muscle fatigue detection through wearable sensors: a comparative study using the myo armband. 1-2.

Morais, Gabriel & Neves, Leonardo & Masiero, Andrey & Castro, Maria Claudia. (2016). Application of Myo Armband System to Control a Robot Interface. 227-231.

Andrean, Deni & Pamungkas, Daniel & Risandriya, Sumantri. (2019). Controlling Robot Hand Using FFT as Input to the NN Algorithm. Journal of Physics: Conference Series. 1230. 012030.

Purushothaman, Geethanjali. (2016). Myoelectric control of prosthetic hands: State-of-the-art review. Medical Devices: Evidence and Research. Volume 9. 247-255.

Angkoon Phinyomark, Franck Quaine, Sylvie Charbonnier, Christine Serviere, Franck Tarpin-Bernard, Yann Laurillau, Feature extraction of the first difference of EMG time series for EMG pattern recognition, Computer Methods and Programs in Biomedicine,Volume 117, Issue 2, 2014

Han-Pang Huang, Yi-Hung Liu and Chun-Shin Wong, "Automatic EMG feature evaluation for controlling a prosthetic hand using supervised feature mining method: an intelligent approach," 2003 IEEE International Conference on Robotics and Automation (Cat.No.03CH37422), Taipei, Taiwan, 2003, pp. 220-225 vol.1

Sadikoglu, Fahreddin & Kavalcioglu, Cemal & Dagman, Berk. (2017). Electromyogram (EMG) signal detection, classification of EMG signals and diagnosis of neuropathy muscle disease. Procedia Computer Science. 120.

Xin Guo, Peng Yang, Ying Li and Wei-Li Yan, "The SEMG analysis for the lower limb prosthesis using wavelet transformation," The 26th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, San Francisco, CA, 2004, pp. 341-344

Zhang, Daohui & Xiong, Anbin & Zhao, Xingang & Han, Jianda. (2012). PCA and LDA for EMG-based control of bionic mechanical hand. 2012 IEEE International Conference on Information and Automation, ICIA 2012. 960-965.

Kaya, Engin & Kumbasar, Tufan. (2019). Hand Gesture Recognition Systems with the Wearable Myo Armband.

Gogić, Aleksandar & Miljkovic, Nadica & Đurđević, Đorđe. (2016). Electromyography-based gesture recognition: Fuzzy classification evaluation.

S.R. Kurniawan and D. Pamungkas, "MYO Armband sensors and Neural Network Algorithm for Controlling Hand Robot," 2018 International Conference on Applied Engineering (ICAE), Batam, 2018, pp. 1-6




DOI: https://doi.org/10.17529/jre.v17i1.16844

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