在高校体育教学中融入 blazepose 人体姿态评估算法的智能跳远评价系统

Tao Wang
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引用次数: 0

摘要

当前高校跳远教学中存在着一些问题,如评价依赖于教师的经验,缺乏科学的评价,不能对学生的成绩进行量化反馈等。针对这些问题,本研究首先将跳远过程划分为接近跑和中空阶段。其次,提出了一种基于虚拟线速度算法的接近跑速度测量方法。随后,通过将 BlazePose 人体姿势评估算法与姿势匹配算法相结合,设计了一种与 BlazePose 人体姿势评估算法相结合的空中跳远动作评估技术。最后,建立了结合 BlazePose 人体姿势评估算法的智能跳远评估系统。研究结果表明,120FPS 视频的平均准确率最高达到 94.47%。结合 BlazePose 人体姿势评估算法的中空跳远动作评估准确率最高,起飞、伸髋和收腹关键动作的准确率分别为 94%、90% 和 88%。此外,与专业教师的评估结果相比,该方法显示的评分结果平均误差范围为 3 分。在BlazePose人体姿态评估算法的智能跳远评估系统的实际应用中,评估分数和跳远熟练程度得到了科学客观的评价,同时教师也提供了有针对性的纠正反馈,取得了良好的应用效果。综上所述,所提出的智能跳远评价系统性能良好、功能完善,能为教师和学生提供可量化的数据参考。
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Intelligent long jump evaluation system integrating blazepose human pose assessment algorithm in higher education sports teaching

There are issues in current higher education long jump teaching, e.g., assessment relies on teachers' experience, lacks scientific evaluation, and can't quantitatively give performance feedback to students. To address these issues, this research first divides the long jump process into the approach run and mid-air phases. Secondly, it proposes a method for measuring approach run speed based on virtual line velocity algorithm. Subsequently, by combining the BlazePose human pose assessment algorithm with posture matching algorithms, a technique for assessing mid-air long jump movements integrated with BlazePose human pose assessment algorithm is designed. Finally, an intelligent long jump evaluation system incorporating the BlazePose human pose assessment algorithm is established. The research findings demonstrate that the average accuracy of video at 120FPS reaches a maximum of 94.47%. The assessment accuracy of mid-air long jump movements integrated with the BlazePose human pose assessment algorithm is highest, with accuracies of 94%, 90%, and 88% for the takeoff, hip extension, and abdominal contraction key movements respectively. Additionally, the method shows a scoring result with an average error range of 3 points compared to evaluations by professional teachers. In the practical application of the BlazePose human pose assessment algorithm's intelligent long jump evaluation system, evaluation scores and long jump proficiency receive scientifically objective assessments, while teachers provide targeted corrective feedback, achieving good application results. In summary, the proposed intelligent long jump evaluation system exhibits good performance, complete functionality, and can provide quantifiable data references for both teachers and students.

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