Machine learning-based classification of healthy and impaired gaits using 3D-GRF signals

Biomedical Signal Processing and Control - Tập 81 - Trang 104448 - 2023
Md Nazmul Islam Shuzan1,2, Muhammad E.H. Chowdhury2, Mamun Bin Ibne Reaz1, Amith Khandakar2, Farhan Fuad Abir3, Md. Ahasan Atick Faisal3, Sawal Hamid Md Ali1, Ahmad Ashrif A. Bakar1, Moajjem Hossain Chowdhury1,2, Zaid B. Mahbub4, M. Monir Uddin4, Mohammed Alhatou5
1Department of Electrical, Electronics and Systems Engineering, Universiti Kebangsaan Malaysia, Bangi, Selangor, 43600, Malaysia
2Department of Electrical Engineering, Qatar University, Doha 2713, Qatar
3Department of Electrical and Electronics Engineering, University of Dhaka, Dhaka 1000, Bangladesh
4Department of Mathematics and Physics, North South University, Dhaka 1229, Bangladesh
5Neuromuscular Division, Hamad General Hospital and Department of Neurology, Alkhor Hospital, Doha, 3050, Qatar

Tài liệu tham khảo

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