A Comparative Analysis of Gesture Recording Technologies and Recognition Methods

Kamala Gurbanova, Fargana Abdullayeva
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Abstract

The dynamic development of computing techniques and communication tools and the improvement of network technology have increased the role of information as the main resource in society. The application of information communication technologies has stimulated the development of intellectual and scientific potential all over the world and has been successfully applied to all fields. Gestures are the only means of communication for hearing and speech impaired people. Automatic recognition of gestures in order to facilitate communication through gestures is an urgent issue from both scientific and practical point of view. This article highlights the static and dynamic gestures. The process of gesture recognition collects data by means of various sensor technologies. The article analyzes the image-based and non-image-based technologies and presents their advantages and disadvantages. It also comparatively analyzes the working principle of existing methods proposed for the gestures identification, explores their advantages and disadvantages and interprets the performance of the software which localizes the hand showing the gesture in the video frame. As a result, it develops a machine learning method based on neural networks for high accuracy identification of gestures. The developed method testing on database open for research shows high performance.
手势记录技术与识别方法的比较分析
计算技术和通信工具的动态发展以及网络技术的改进增加了信息作为社会主要资源的作用。信息通信技术的应用刺激了全世界智力和科学潜力的发展,并已成功地应用于各个领域。手势是听力和语言障碍人士唯一的交流方式。从科学和实用的角度来看,手势的自动识别是一个迫切需要解决的问题。本文重点介绍静态和动态手势。手势识别过程通过各种传感器技术收集数据。本文分析了基于图像和非基于图像的技术,并介绍了它们的优缺点。对比分析了现有手势识别方法的工作原理,探讨了各种方法的优缺点,并对视频帧中显示手势的手定位软件的性能进行了说明。因此,它开发了一种基于神经网络的机器学习方法,用于高精度识别手势。所开发的方法在面向研究开放的数据库上进行了测试,显示出良好的性能。
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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