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Recognition of Arabic Sign Language (ArSL) Using Recurrent Neural Networks

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Author(s): Mufleh Dhyabat | Raed Abu Zitar | Manar Maraqa | Farid Al-Zboun

Journal: Journal of Biophysical Chemistry
ISSN 2153-036X

Volume: 04;
Issue: 01;
Start page: 41;
Date: 2012;
Original page

Keywords: Arabic Sign Language | Feedforward Neural Networks | Recurrent Neural Networks | Gesture Recognition

ABSTRACT
The objective of this research is to introduce the use of different types of neural networks in human hand gesture recog-nition for static images as well as for dynamic gestures. This work focuses on the ability of neural networks to assist in Arabic Sign Language (ArSL) hand gesture recognition. We have presented the use of feedforward neural networks and recurrent neural networks along with its different architectures; partially and fully recurrent networks. Then we have tested our proposed system; the results of the experiment have showed that the suggested system with the fully recurrent architecture has had a performance with an accuracy rate 95% for static gesture recognition.
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