基于智能分析和传感器数据挖掘的体育教学中测量与评价的关系

Juwei Zhang, Jing Wang, Mingjun Liu, Zhihui Li
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引用次数: 0

摘要

评估体育教学的效果、学生的学习情况以及教学过程中得到的反馈,都是高校体育教学过程中的重要组成部分。提高这些环境下的体育教学质量至关重要。智能技术能够推动学校体育教学的数字化革命,正在给教育领域带来重大变革,引起各界人士的关注。为科学评估智能技术对体育教学的影响,本研究利用最新的智能分析和传感数据挖掘,设计了智能体育教学测量与评价模型,利用GPS定位、内置地图、重力感应等技术,实时反馈运动轨迹、距离、时间,进而计算出运动的实时速度和平均速度,由于不同学生的身体姿态达到相同效果时所需的速度不尽相同,本文随机选取不同BMI指数的学生进行实证分析。实验结果表明,因子分析的主成分提取出四个共同因子,累计贡献率为69.5%,四个维度的检验-再测信度为0.665-0.862。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The relationship between measurement and evaluation in physical education teaching based on intelligent analysis and sensor data mining
Assessing the effectiveness of physical education instruction, students’ learning, and the feedback received from the teaching process are all vital components of the physical education teaching process in colleges and universities. Improving the quality of physical education instruction in these settings is essential. With its ability to drive the digital revolution of physical education in schools, intelligent technology is bringing about significant changes in the field of education and drawing attention from people from all walks of life. To assess intelligent technology’s impact on physical education instruction in a scientific manner, this study utilizes the latest intelligent analysis and sensing data mining to design an intelligent physical education measurement and evaluation model, which utilizes GPS positioning, built-in maps, and gravity sensing to provide real-time feedback on the trajectory, distance, and time of the movement, and then calculates the real-time and average speed of the movement, as different students’ body postures to achieve the the same effect when the required speed is not the same, this paper randomly selected students with different BMI index for empirical analysis. The experimental results show that the principal components of the factor analysis extracted four common factors with a cumulative contribution rate of 69.5%, and the test-retest reliability of the four dimensions is 0.665–0.862.
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