College of Physical Education, Wuhan Sports University, Wuhan 430079, Hubei, PR China.
SLAS Technol. 2024 Aug;29(4):100151. doi: 10.1016/j.slast.2024.100151. Epub 2024 May 23.
This research emphasises the value of physical training for table tennis players, particularly as ball speed and spin rate decline and emphasises how important intensity quality is to the game. Chinese table tennis players' dual identities place greater demands on the general growth of their learning and training as a crucial component of talent development preparation. Athletes' general quality, competitive level, and ability to avoid sports injuries are all improved by scientific and focused physical training. In order to achieve the functions of intelligent camera, multi-angle broadcasting, and 3D scene reproduction, this study combines the physical training model of artificial intelligence. This gives the audience a more engaging and in-depth viewing experience. More feature extraction of the match footage is made possible by deep learning and convolutional neural networks when combined with large-scale video data, greatly enhancing the match information for viewers. The experimental findings demonstrate that the accuracy of table tennis human technical movement recognition reaches 98.88 % based on the enhanced AM-Softmax classification algorithm.
本研究强调了体能训练对乒乓球运动员的重要性,尤其是在球速和旋转速度下降的情况下,强调了强度质量对比赛的重要性。中国乒乓球运动员的双重身份对他们的学习和训练的全面发展提出了更高的要求,这是人才发展准备的重要组成部分。科学、有针对性的体能训练可以提高运动员的综合素质、竞技水平和避免运动损伤的能力。为了实现智能摄像机、多角度直播和 3D 场景再现的功能,本研究结合了人工智能的体能训练模型。这为观众提供了更具吸引力和深入的观看体验。通过将深度学习和卷积神经网络与大规模视频数据相结合,可以对比赛视频进行更多的特征提取,从而极大地增强了观众的比赛信息。实验结果表明,基于增强的 AM-Softmax 分类算法,乒乓球人体技术动作识别的准确率达到 98.88%。