智慧校园:机器视觉与体育教育的深度融合

IF 0.7 4区 工程技术 Q4 ENGINEERING, MARINE International Journal of Maritime Engineering Pub Date : 2024-07-27 DOI:10.5750/ijme.v1i1.1348
Yukun Lu, Xingli Hu, Jiangtao Li
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引用次数: 0

摘要

智慧校园标志着机器视觉技术与体育教育的深度融合,创造了一个创新和充满活力的学习环境。通过将机器视觉技术融入体育教育环境,校园成为了一个智能生态系统,先进的图像识别和分析技术提高了学生参与度和幸福感的各个方面。从自动体能评估到体育活动的实时监控,机器视觉为个性化和数据驱动的体育教育体验做出了贡献。这种整合不仅彻底改变了学生与健身活动的互动方式,还有助于有效跟踪进展和总体健康状况。本研究提出了一种基于中阶链深度学习(MOCDL)的新型物联网路由方案,以增强机器视觉与体育教育活动之间的协同作用。通过整合物联网功能,智慧校园建立了一个无缝连接各种体育教育资源和设施的网络,从而营造了一个更加互联和智能的学习环境。MOCDL 算法作为这种整合的支柱,优化了信息路由,实现了机器视觉系统与体育教育项目之间的高效数据交换。这种深度集成有助于对学生活动进行实时监控、进行个性化体能评估,并通过数据驱动深入了解学生的整体健康状况。所提出的框架不仅提升了体育教育体验的质量,还有助于建立一个技术先进、全面的智慧校园范例。
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Smart Campus: The Deep Integration of Machine Vision and Physical Education
A smart campus signifies the profound integration of machine vision technology with physical education, creating an innovative and dynamic learning environment. By incorporating machine vision into physical education settings, the campus becomes an intelligent ecosystem where advanced image recognition and analysis enhance various aspects of student engagement and well-being. From automated fitness assessments to real-time monitoring of physical activities, machine vision contributes to personalized and data-driven physical education experiences. This integration not only revolutionizes the way students interact with fitness routines but also facilitates efficient tracking of progress and overall health. The study proposes a novel IoT-enabled routing scheme based on Middle-Order Chain Deep Learning (MOCDL) to enhance the synergy between machine vision and physical education initiatives. By integrating IoT capabilities, the smart campus establishes a network that seamlessly connects various physical education resources and facilities, fostering a more interconnected and intelligent learning environment. The MOCDL algorithm, acting as the backbone of this integration, optimizes the routing of information, enabling efficient data exchange between machine vision systems and physical education programs. This deep integration facilitates real-time monitoring of student activities, personalized fitness assessments, and data-driven insights into overall well-being. The proposed framework not only elevates the quality of physical education experiences but also contributes to the establishment of a technologically advanced and holistic smart campus paradigm.
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
18
审稿时长
>12 weeks
期刊介绍: The International Journal of Maritime Engineering (IJME) provides a forum for the reporting and discussion on technical and scientific issues associated with the design and construction of commercial marine vessels . Contributions in the form of papers and notes, together with discussion on published papers are welcomed.
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