Hand gestures recognition classification

Hind Ibrahim Mohammed *, Bashar Ahmed Sultan and Khalid Hadi Hamee

Department of Mathematics, Al-Muqdad college of eduction, Unversity of diyala, Diyala, Iraq.
 
Review
International Journal of Engineering Research Updates, 2022, 03(02), 008–012.
Article DOI: 10.53430/ijeru.2022.3.2.0053
Publication history: 
Received on 27 August 2022; revised on 01 October 2022; accepted on 04 October 2022
 
Abstract: 
The use of hand gestures for human-machine interaction offers an enticing alternative to bulky interface devices. The current study discusses the classification of gestures in real time and aims to create an algorithm capable of classifying gestural control commands accurately. For the classification of a gesture vocabulary of eight dynamic hand gestures, two separate classifiers were created. The established classifiers were: K-means + rule-based classifier and classifier of to test the accuracy of classification recognition in which a test set of 180 trajectories was categorized, an experiment was conducted. The accuracies obtained for the K-means and Learning classifier systems( LCS ) classifiers, respectively, are 90 and 94 percent.
 
Keywords: 
Component: Classification; Human machine interface; LCS; K-means; Gesture recognotion
 
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