Hand gesture recognition (HGR) is used in a numerous applications, including medical health-care, industrial purpose and sports detection. We have developed a real-time hand gesture recognition system using inertial sensors for the smart home application. Developing such a model facilitates the medical health field (elders or disabled ones). Home automation has also been proven to be a tremendous benefit for the elderly and disabled. Residents are admitted to smart homes for comfort, luxury, improved quality of life, and protection against intrusion and burglars. This paper proposes a novel system that uses principal component analysis, linear discrimination analysis feature extraction, and random forest as a classifier to improve HGR accuracy. We have achieved an accuracy of 94% over the publicly benchmarked HGR dataset. The proposed system can be used to detect hand gestures in the healthcare industry as well as in the industrial and educational sectors.
CITATION STYLE
Rustam, H., Muneeb, M., Alsuhibany, S. A., Ghadi, Y. Y., Shloul, T. A., Jalal, A., & Park, J. (2023). Home Automation-Based Health Assessment along Gesture Recognition via Inertial Sensors. Computers, Materials and Continua, 75(1), 2331–2346. https://doi.org/10.32604/cmc.2023.028712
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