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Hand gesture recognition of English alphabets using artificial neural network

机译:基于人工神经网络的英文字母手势识别

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Human computer interaction (HCI) and sign language recognition (SLR), aimed at creating a virtual reality, 3D gaming environment, helping the deaf-and-mute people etc., extensively exploit the use of hand gestures. Segmentation of the hand part from the other body parts and background is the primary need of any hand gesture based application system; but gesture recognition systems are often plagued by different segmentation problems, and by the ones like co-articulation, movement epenthesis, recognition of similar gestures etc. The principal objective of this paper is to address a few of the said problems. In this paper, we propose a method for recognizing isolated as well as continuous English alphabet gestures which is a step towards helping and educating the hearing and speech-impaired people. We have performed the classification of the gestures with artificial neural network. Recognition rate (RR) of the isolated gestures is found to be 92.50% while that of continuous gestures is 89.05% with multilayer perceptron and 87.14% with focused time delay neural network. These results, when compared with other such system in the literature, go into showing the effectiveness of the system.
机译:旨在创建虚拟现实,3D游戏环境,帮助聋哑人等的人机交互(HCI)和手语识别(SLR)广泛利用了手势的使用。从其他身体部位和背景进行手部分割是任何基于手势的应用系统的主要需求;但是手势识别系统经常受到不同的分割问题以及诸如共同发音,运动上肢,相似手势的识别等困扰。本文的主要目的是解决一些上述问题。在本文中,我们提出了一种识别孤立的和连续的英语字母手势的方法,这是朝着帮助和教育听觉和语言障碍人士的方向迈出的一步。我们已经使用人工神经网络对手势进行了分类。多层感知器的孤立手势的识别率(RR)为92.50%,而连续手势的识别率为89.05%,聚焦延时神经网络的识别率为87.14%。与文献中的其他此类系统相比,这些结果证明了该系统的有效性。

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