基于深度学习的技术检测模型在乒乓球教学中的应用

Shunshui He
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引用次数: 0

摘要

随着计算机技术的发展,乒乓球教学方法迎来了新的技术革命。为解决传统教学方法过分关注运动员肢体和运动员发力动作的问题,本研究采用改进的深度学习算法技术检测模型,对乒乓球运动轨迹进行分析,为运动员提供有针对性的战术训练。结果表明,该模型的成功率和准确率得分分别为95%和96%,计算时间仅为21.75 ms,显示出较高的分析精度和计算效率。同时,该方法下的训练策略胜率可达 65 % 以上,有效提高了运动员的胜率。这证明所提出的技术检测模型具有良好的算法性能和数据分析能力,可以为乒乓球训练和教学工作提供数据支持。
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The application of deep learning-based technique detection model in table tennis teaching and learning

With the development of computer technology, the teaching methods of table tennis have ushered in a new technological revolution. To solve the problem of traditional teaching methods overly focusing on athlete limbs and athlete force movements, this study uses an improved deep learning algorithm technology detection model to analyze the trajectory of table tennis and provide targeted tactical training for athletes. The results showed that the success rate and accuracy score of the model were 95 % and 96 %, respectively, with a calculation time of only 21.75 ms, indicating high analytical accuracy and computational efficiency. Meanwhile, the winning rate of the training strategy under this method can reach over 65 %, effectively improving the winning rate of athletes. This proves that the proposed technology detection model has good algorithm performance and data analysis ability, and can provide data support for table tennis training and teaching work.

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