Application of posture estimation optimization algorithm in the analysis of college air volleyball teaching movements

Guowei Yuan
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Abstract

The advent of computer technology and the modernization of sports education have led to an increasing reliance on intelligent technology in the field of sports education. To improve the application effect of intelligent technology in physical education, a volleyball motion analysis technology combined with pose estimation optimization algorithm is designed. During the process, Kinect collects the joint data of the research object, which is then combined with the commonly used background subtraction and frame difference optimization techniques. This results in the construction of a background model. The background update number in the initial frame is utilized as the reference value. The contour edge is smoothed through the application of a one-dimensional Gaussian kernel function, and a teaching action guidance system is designed. The experimental results showed that the average accuracy of the research method reached 79.7 % and the average recall rate reached 75.2 %. The average relative error of the method was 4.13 % when comparing the accuracy of human body model. The research method is validated to accurately capture and analyze volleyball motion, which can provide some technical help for sports teaching.

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姿势估计优化算法在高校气排球教学动作分析中的应用
计算机技术的出现和体育教育的现代化,使得体育教育领域越来越依赖于智能技术。为了提高智能技术在体育教学中的应用效果,设计了一种结合姿势估计优化算法的排球运动分析技术。在此过程中,Kinect 采集研究对象的关节数据,然后结合常用的背景减法和帧差优化技术。这样就构建了一个背景模型。初始帧中的背景更新数被用作参考值。应用一维高斯核函数对轮廓边缘进行平滑处理,并设计出教学动作引导系统。实验结果表明,研究方法的平均准确率达到 79.7%,平均召回率达到 75.2%。与人体模型的准确性相比,该方法的平均相对误差为 4.13%。该研究方法在准确捕捉和分析排球运动方面得到了验证,可为体育教学提供一定的技术帮助。
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