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Prediction and analysis of sphere motion trajectory based on deep learning algorithm optimization

机译:基于深度学习算法优化的球体运动轨迹的预测与分析

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摘要

Ball sports have great variability in the game and the intelligent control of the rules of ball movement can effectively improve the training effect of athletes. However, the current research on artificial intelligence of spherical motion trajectory prediction points is basically blank. Based on this, this study is based on deep learning technology, and obtains the main experimental data through network data collection in the research and builds the table tennis spatial position image data set under various environments with accurate annotation based on the traditional deep learning. At the same time, the convolutional neural network is used as the location recognition algorithm, and a prediction algorithm for predicting the trajectory of table tennis is proposed based on the recurrent neural network. In addition, this paper designs comparative experiments to analyze the effectiveness of the algorithm model, and evaluates the real-time recognition, location and trajectory prediction capabilities, and conducts quantitative analysis. The research shows that the algorithm has certain practical effects and can provide theoretical reference for subsequent related research.
机译:球体育在游戏中具有很大的变化,智能控制球运动规则可以有效提高运动员的培训效果。然而,目前对球形运动轨迹预测点的人工智能研究基本坯料。基于这一点,本研究基于深度学习技术,并通过研究中的网络数据收集获得主要实验数据,并在各种环境下建立乒乓球空间位置图像数据,基于传统的深度学习准确的注释。同时,卷积神经网络用作位置识别算法,基于经常性神经网络提出了一种预测算法,用于预测表网球的轨迹。此外,本文设计了对算法模型的有效性的比较实验,并评估实时识别,位置和轨迹预测能力,并进行定量分析。该研究表明,该算法具有一定的实际效果,可以为随后的相关研究提供理论参考。

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