基于手势线索识别/手语到文本转换的人机交互

Zain Murtaza, Hadia Akmal, Wardah Afzal, H. Gelani, Z. Abdin, Muhammad Hamza Gulzar
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引用次数: 4

摘要

人机交互是一个非常广泛和多样化的领域,涉及研究和设计活动。人与计算机系统之间的这种交互可以通过各种方法来完成。手势识别提供了一种自然和直观的交互方式。它是听障人士自然有效的交流互动方式。手势提示是非语言交际的一种,在这种交际中,明显的身体动作传递着特定的信息。本文提出了一种基于跳跃运动传感器(LMS)的人机交互手势识别系统。LMS是一种精通跟踪手部动作或手势的设备。本研究的目的是开发一种HCI系统,将手语转换为听力受损人士的文本。通过手部或肢体动作,残疾人可以很容易地向护理人员或机器人传达他们的信息。手语以提供与计算机或机器和机器人进行交互的自然和直观的方式而闻名。我们采用了三种手语文本转换(SLTC)的识别技术来确定模型的性能。采用人工神经网络(ANN)、几何模板匹配和相互关联技术进行静态手势识别,几何模板匹配效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Computer Interaction Based on Gestural Cues Recognition/Sign Language to Text Conversion
Human computer interaction is very wide-ranging and diverse field regarding research and design activity. This interaction between humans and computer systems can be done through various methods. Gesture recognition offers a natural and intuitive way for interaction. It is a natural and effective mean of communication and interaction for hearing-impaired people. Gestural cue is a category of non-verbal communication in which noticeable body actions transfer specific messages. This paper presents a gesture recognition system for the development of a Human Computer Interaction (HCI) using Leap Motion Sensor (LMS). LMS is a device proficient with tracking hand motions or gestures. The objective of this research is development of an HCI system that will convert sign language to text for hearing impaired people. Through hand or body gestures, the disabled can easily convey their message to the caregiver or robot. Sign language has been known for providing natural and intuitive way to interact with computers or machines and robots. We are employing three recognition techniques of Sign Language to Text Conversion (SLTC) to determine the performance of the model. Artificial Neural Network (ANN), Geometric Template Matching and Cross Correlation techniques were employed for static gesture recognition and the best results were acquired from geometric template matching.
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