A Real-Time System for Recognition of American Sign Language by using Deep Learning

M. Taskiran, Mehmet Killioglu, N. Kahraman
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引用次数: 45

Abstract

Deaf people use sign languages to communicate with other people in the community. Although the sign language is known to hearing-impaired people due to its widespread use among them, it is not known much by other people. In this article, we have developed a real-time sign language recognition system for people who do not know sign language to communicate easily with hearing-impaired people. The sign language used in this paper is American sign language. In this study, the convolutional neural network was trained by using dataset collected in 2011 by Massey University, Institute of Information and Mathematical Sciences, and 100% test accuracy was obtained. After network training is completed, the network model and network weights are recorded for the real-time system. In the real-time system, the skin color is determined for a certain frame for hand use, and the hand gesture is determined using the convex hull algorithm, and the hand gesture is defined in real-time using the registered neural network model and network weights. The accuracy of the real-time system is 98.05%.
基于深度学习的美国手语实时识别系统
聋哑人用手语与社区里的其他人交流。虽然听力受损的人都知道手语,因为它在他们中间广泛使用,但其他人却知之甚少。在这篇文章中,我们开发了一个实时手语识别系统,让不懂手语的人更容易与听障人士交流。本文中使用的手语是美国手语。在本研究中,使用美国梅西大学信息与数学科学研究所2011年收集的数据集对卷积神经网络进行训练,测试准确率达到100%。网络训练完成后,记录实时系统的网络模型和网络权值。在实时系统中,确定某一帧的皮肤颜色,使用凸包算法确定手势,并使用注册的神经网络模型和网络权重实时定义手势。实时系统的精度为98.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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