Two-Hand Gesture Recognition for User Information Interaction based on Internet of Educational Things

P. Netinant, Apichaya Mingkhwan, Meennapa Rakhiran
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Abstract

With the increasing prevalence of computer technology, interaction through the computer has become a significant challenge for certain groups, such as the elderly, disabled, and students. Hand sign recognition has emerged as a promising solution in recent years, as it offers a natural and adaptable means of human-machine interaction, particularly in educational contexts. However, real-time hand gesture recognition is a complex system development task that requires advanced technology and expertise. To address this issue, we propose a system architecture and software configuration for developing hand sign recognition based on the internet of things (IoT). In the experiment, a Raspberry Pi with a camera, Python programming, and Open-Source Computer Vision (OpenCV) software were used to develop an accurate system for detecting, recognizing, and interpreting two-hand gesture recognition in the context of human-IoT interaction. The project's primary focus is improving the accuracy of hand sign gesture recognition in real-time systems. The proposed system contributes to facilitating friendly and adaptable human-computer interaction, especially in educational services. In addition, the research result enables better computer interactions for the elderly and disabled, thus promoting greater inclusivity and accessibility in the technology industry.
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基于教育物联网用户信息交互的双手手势识别
随着计算机技术的日益普及,通过计算机进行交互已成为某些群体(如老年人、残疾人和学生)面临的重大挑战。近年来,手语识别已经成为一种很有前途的解决方案,因为它提供了一种自然且适应性强的人机交互方式,特别是在教育环境中。然而,实时手势识别是一项复杂的系统开发任务,需要先进的技术和专业知识。为了解决这个问题,我们提出了一种基于物联网(IoT)的手势语识别系统架构和软件配置。在实验中,使用带有摄像头的树莓派,Python编程和开源计算机视觉(OpenCV)软件开发了一个精确的系统,用于检测,识别和解释人类物联网交互背景下的双手手势识别。该项目的主要重点是提高实时系统中手势识别的准确性。拟议的系统有助于促进友好和适应性强的人机交互,特别是在教育服务方面。此外,研究成果使老年人和残疾人能够更好地进行计算机交互,从而促进科技行业的包容性和可及性。
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