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Recognition of Holoscopic 3D Video Hand Gesture Using Convolutional Neural Networks
Authors
M Abbod
N Alnaim
R Swash
Publication date
15 April 2020
Publisher
'MDPI AG'
Doi
Abstract
Copyright © 2020 by the authors. The convolutional neural network (CNN) algorithm is one of the efficient techniques to recognize hand gestures. In human–computer interaction, a human gesture is a non-verbal communication mode, as users communicate with a computer via input devices. In this article, 3D micro hand gesture recognition disparity experiments are proposed using CNN. This study includes twelve 3D micro hand motions recorded for three different subjects. The system is validated by an experiment that is implemented on twenty different subjects of different ages. The results are analysed and evaluated based on execution time, training, testing, sensitivity, specificity, positive and negative predictive value, and likelihood. The CNN training results show an accuracy as high as 100%, which present superior performance in all factors. On the other hand, the validation results average about 99% accuracy. The CNN algorithm has proven to be the most accurate classification tool for micro gesture recognition.Imam Abdulrahman bin Faisal Universit
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Multidisciplinary Digital Publishing Institute
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oai:mdpi.com:/2227-7080/8/2/19...
Last time updated on 20/10/2022
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Brunel University Research Archive
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oai:bura.brunel.ac.uk:2438/208...
Last time updated on 18/12/2020