Assistive device to control prosthetic hand movements using machine learning approach
Keywords:
Prosthetic Hand, EMG sensor, Deep Learning, Convolution Neural Networks, Patterns etc.Abstract
Smart Assistive devices developed to support the disabled people suffered with Monoplegia. The Monoplegia kind of a paralysis which have the impact on one arm or one leg. The person affected with this disease unable to move the hand or leg to perform their regular activities. The rehabilitation process of paralysis affected patient involves make them to perform their activities by own with the help of an assistive smart device. The device must be capable to identify the user intension of activity and assist them to perform the same task. The proposed work makes use of 3D prosthetic hand to replace the inactive hands of the patients. The prosthetic hands are synthetic extensions that are used to support or supplement the affected or disabled parts. The Electromyography sensors installed on this prosthetic hand produces the biomedical signal that records muscle contractions. These sensors are capable of detecting muscle movements and high variations in real time. The proposed work makes use of Electromyography (EMG) signals to build an assist system and identify the intended activity. These enables patients with hand paralyzed to perform the inactive hand functions.
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References
Tabassum, Ms Humera, and Veena Saraf. "A Low Cost Prosthetic Hand using Arduino and Servo Motors." International Journal of Engineering Research & Technology (IJERT), ISSN: 2278-0181, Vol. 9 Issue 07, July-2020.
Sakib, Nazmus, and Md Kafiul Islam. "Design and Implementation of an EMG Controlled 3D Printed Prosthetic Arm." In 2019 IEEE International Conference on Biomedical Engineering, Computer and Information Technology for Health (BECITHCON), pp. 85-88. IEEE, 2019.
Farooq, U., U. Ghani, S. A. Usama, and Y. S. Neelum. "EMG control of a 3D printed myo electric prosthetic hand." In IOP Conference Series: Materials Science and Engineering, vol. 635, no. 1, p. 012022. IOP Publishing, 2019.
Imran, Alishba, William Escobar, and Freidoon Barez. "Design of an Affordable Prosthetic Arm Equipped with Deep Learning Vision-Based Manipulation." arXiv preprint arXiv:2103.02099 (2021).
Utane, Akshay S., Mahesh Thorat, Shivam Kale, Dakshayani Sangekar, and Shivani Kondhekar. "Assisting system for paralyzed and mute people with heart rate monitoring." (2019).
Divakaran, Sindu, T. Sudhakar, D. Haritha, and Khudsiya Afshan. "Hand Function Improvement for Hemiplegic Patients Integrated with IOT." Journal of Pharmaceutical Sciences and Research 11, no. 9 (2019): 3137-3139.
VanHuy, Tran, Dao Tuan Minh, Nguyen Phan Kien, and Tran Anh Vu. "Simple robotic hand in motion using arduino controlled servos." International Journal of Science and Research (IJSR) 6, no. 3 (2017): 972-975.
Krishnavarthini, M., N. Sivakami, P. Suganya, M. Sheerinbegum, and G. Saranya. "Raspberry Pi Based Paralyze Attack Rehabilitation System." (2017).
Mounika, M. P., B. S. S. Phanisankar, and M. Manoj. "Design & analysis of prosthetic hand with EMG technology in 3-D printing machine." Int. J. Curr. Eng. Technol 7, no. 1 (2017): 115.
J. Ma, N. V. Thakor, and F. Matsuno, "Hand and wrist movement control of myoelectric prosthesis based on synergy," IEEE Transactions on Human-Machine Systems, vol. 45, pp. 74- 83, 2015.
Khan, Rafiqul Zaman, Noor Adnan Ibraheem, and Natarajan Meghanathan. "Comparative study of hand gesture recognition system." In Proc. of International Conference of Advanced Computer Science & Information Technology in Computer Science & Information Technology (CS & IT), vol. 2, no. 3, pp. 203-213. 2012.
M. A. Oskoei and H. Hu, "Myoelectric control systems—A survey," Biomedical Signal Processing and Control, vol. 2, pp. 275-294, 2007.
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