Abstract
Modern wheelchairs, with advanced and robotic technologies, could not reach the life of millions of disabled people due to their high costs, technical limitations, and safety issues. This paper proposes a gesture-controlled smart wheelchair system with an IoT-enabled fall detection mechanism to overcome these problems. It can recognize gestures using Convolutional Neural Network (CNN) model along with computer vision algorithms and can control the wheelchair automatically by utilizing these gestures. It maintains the safety of the users by performing fall detection with IoT-based emergency messaging systems. The development cost of the overall system is cheap and is lesser than USD 300. Hence, it is expected that the proposed smart wheelchair should be affordable, safe, and helpful to physically disordered people in their independent mobility.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference35 articles.
1. Disability Studies;Quirici;Year’s Work Crit. Cult. Theory,2019
2. Thyrotoxic Periodic Paralysis;Haider;J. Ayub Med. Coll. Abbottabad,2019
3. Systematic Review on Effectiveness of Shoulder Taping in Hemiplegia;Ravichandran;J. Stroke Cerebrovasc. Dis.,2019
4. Addressing the Health Needs of People with Disabilities in India;Senjam;Indian J. Public Health,2020
5. Wagner, L. Disabled People in the World in 2019: Facts and Figures. 2021.
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