A Comprehensive Review on Brain-Computer Interface Controlled Movements
DOI:
https://doi.org/10.24113/ijoscience.v5i6.243Keywords:
electroencephalogram (EEG), Brain-Computer Interface (BCI), Arm Movements, Machine LearningAbstract
A brain-computer interface (BCI), also referred to as a mind-machine interface (MMI) or a brain-machine interface (BMI), provides a non-muscular channel of communication between the human brain and a computer system. With the advancements in low-cost electronics and computer interface equipment, as well as the need to serve people suffering from disabilities of neuromuscular disorders, a new field of research has emerged by understanding different functions of the brain. The electroencephalogram (EEG) is an electrical activity generated by brain structures and recorded from the scalp surface through electrodes. Researchers primarily rely on EEG to characterize the brain activity, because it can be recorded noninvasively by using portable equipment. The EEG or the brain activity can be used in real time to control external devices via a complete BCI system. For these applications there is need of such machine learning application which can be efficiently applied on these EEG signals. The aim of this research is review different research work in the field of brain computer interface related to body parts movements.
Downloads
References
[2] S. Bhattacharyya, A. Khasnobish, S. Chatterjee, A. Konar and D. N. Tibarewala, “Performance analysis of LDA, QDA and KNN algorithms in left-right limb movement classification from EEG data”, 2010 International Conference on Systems in Medicine and Biology, Kharagpur, 2010, pp. 126-131.
[3] Tang, Zhichuan & Li, Chao & Sun, Shouqian, “Single-trial EEG classification of motor imagery using deep convolutional neural networks”, Optik - International Journal for Light and Electron Optics, 2016.
[4] Alexandre Barachant, Stephane Bonnet, Marco Congedo, Christian Jut- ´ ten, “Multiclass BrainComputer Interface Classification by Riemannian Geometry”, IEEE Transactions on Biomedical Engineering, 2012.
[5] Barachant, Alexandre & Bonnet, Stephane & Congedo, Marco & Jutten, ´ Christian, “Classification of covariance matrices using a Riemannianbased kernel for BCI applications”, Neurocomputing, 2013.
[6] C. Lindig-Leon and L. Bougrain, “A Multi-label Classification Method for Detection of Combined Motor Imageries”, 2015 IEEE International Conference on Systems, Man, and Cybernetics, Kowloon, 2015
[7] Marquez L, Alejandro, & Munoz. "Analysis & classification of electroencephalographic signals (EEG) to identify arm movements.", Electrical Engineering, Computing Science and Automatic Control (CCE), IEEE, 2013, pp. 138- 143.
[8] Zhiwei, Li, and Shen Minfen. "Classification of mental task EEG signals using wavelet packet entropy and SYM.",IEEE, 2007, pp.906-909.
[9] Ting, Wu, Yan Guo-zheng, Yang Banghua, & Sun Hong. "EEG feature extraction based on wavelet packet decomposition for brain computer interface.", Elsevier, 2008,Vol. 41, Issue 6, pp. 618-625.
[10] Syed Khairul Bashar and Mohammed Imamul Hassan Bhuiyan, “Identification of Arm Movements Using Statistical Features from EEG Signals in Wavelet Packet Domain ”, IEEE, 2015.
[11] Saugat Bhattacharyya, DebabrotaBasu, Amit Konara, D.N. Tibarewala, “Interval type-2 fuzzy logic based multiclass ANFIS algorithm for real-time EEG based movement control of a robot arm”, Elsevier, 2015.
[12] Faisal Farooq and PrebenKidmose, “Random Forest classification for p300 based brain computer interface applications,” IEEE, 2013, pp 1-5.
[13] Prasant Kumar Pattnaik , Jay Sarraf, ” Brain Computer Interface issues on hand movement”, Journal of King Saud University – Computer and Information Sciences (2018) 30, 18–24.
[14] Muhammed Al-Suify, Walid Al-Atabany, Mohamed.A.A.Eldosoky, “Classification of right and left hand movement using nonlinear analysis” IEEE, 2017.
Downloads
Published
Issue
Section
License
Copyright (c) 2019 Kulsheet Kaur Virdi, Satish Pawar

This work is licensed under a Creative Commons Attribution 4.0 International License.
IJOSCIENCE follows an Open Journal Access policy. Authors retain the copyright of the original work and grant the rights of publication to the publisher with the work simultaneously licensed under a Creative Commons CC BY License that allows others to distribute, remix, adapt, and build upon your work, even commercially, as long as they credit you for the original creation. Authors are permitted to post their work in institutional repositories, social media or other platforms.
Under the following terms:
-
Attribution — You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.
- No additional restrictions — You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.