不同手势识别方法的实现与性能分析

M. Ahmed, Md Anwar Hossain, A. Abadin
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引用次数: 1

摘要

手势识别是近年来人机交互和计算机视觉时代的先进美容技术之一,在现实世界中有着广泛的应用。但是由于手势的方向、光照条件、复杂的背景、手势图像的平移和缩放等因素,使手势识别变得非常复杂。为了消除这一限制,已经开展了一些研究工作,成功地降低了这种复杂性。然而,本文提出并比较了四种不同的手势识别系统,并在其上应用了一些优化技术,大大提高了现有模型的精度和模型的运行时间。采用优化技巧后,调整后的手势识别模型准确率为93.21%,运行时间为224秒,比现有的同类手势识别模型分别快2.14%和248秒。本文的总体成果可应用于智能家居控制、摄像头控制、机器人控制、医疗系统、自然对话等计算机视觉和人机交互的诸多领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation and Performance Analysis of Different Hand Gesture Recognition Methods
In recent few years, hand gesture recognition is one of the advanced grooming technologies in the era of human computer interaction and computer vision due to a wide area of application in the real world. But it is a very complicated task to recognize hand gesture easily due to gesture orientation, light condition, complex background, translation and scaling of gesture images. To remove this limitation, several research works have developed which is successfully decrease this complexity. However, the intention of this paper is proposed and compared four different hand gesture recognition system and apply some optimization technique on it which ridiculously increased the existing model accuracy and model running time. After employed the optimization tricks, the adjusted gesture recognition model accuracy was 93.21% and the run time was 224 seconds which was 2.14% and 248 seconds faster than an existing similar hand gesture recognition model. The overall achievement of this paper could be applied for smart home control, camera control, robot control, medical system, natural talk, and many other fields in computer vision and human-computer interaction.
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