基于递归神经网络的阿拉伯手语识别

M. Maraqa, Farid Al-Zboun, Mufleh Dhyabat, R. A. Zitar
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引用次数: 150

摘要

本文的目的是介绍两种不同的递归神经网络在静态图像的人类手势识别中的应用。由于神经网络在许多人机交互应用中是一个很有前途的工具,因此本文主要研究神经网络在阿拉伯手语(ArSL)手势识别中的辅助能力。我们介绍了我们提出的系统的步骤,并将Elmanpsilas模型作为部分循环架构和具有循环链路的完全连接网络提出,这被认为有助于网络收敛并获得稳定性,然后我们在为此举行的实验中对其进行了测试;实验结果表明,采用全循环架构的系统具有95%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Arabic Sign Language (ArSL) using recurrent neural networks
The objective of this paper is to introduce the use of two different recurrent neural networks in human hand gesture recognition for static images. Because neural networks are a promising tool for many human computer interaction applications, this paper focuses on the ability of neural networks to assist in Arabic Sign Language(ArSL) hand gesture recognition. We have introduced the steps of our proposed system and have presented the Elmanpsilas model as a partially recurrent architecture and a fully connected network with recurrent links that is believed to help the network to converge and gain stability, then we have tested it in an experiment held for this; 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%.
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