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Simulation analysis of athletes' motion recognition based on deep learning method and convolution algorithm

机译:基于深度学习方法和卷积算法的运动员运动识别模拟分析

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摘要

Athletes have a large amount of video information, so how to capture effective information is the key to improving athletes' training efficiency and improving the quality of the game. From the perspective of deep learning, this study analyzes and improves traditional algorithm models based actual needs, and jointly learns multi-scale features. At the same time, in view of the problem of over-fitting in the model training process, this study uses the sparse pyramid pool strategy to adjust the pool parameterization process and reduce the complexity of feature description. In addition, the research designs experiment to analyze the performance of the improved algorithm model and select the appropriate database to analyze the recognition effect of the algorithm model. The research shows that the algorithm of this research has a certain improvement in the recognition effect of athletes, and the recognition effect matching the artificial design features can be obtained, and it can provide theoretical reference for subsequent related research.
机译:运动员有大量的视频信息,那么如何捕捉有效信息是提高运动员培训效率和提高游戏质量的关键。从深度学习的角度来看,这项研究分析并提高了基于实际需求的传统算法模型,共同学习了多尺度特征。同时,鉴于模型培训过程中的过度拟合问题,本研究使用稀疏金字塔池策略来调整池参数化过程并降低特征描述的复杂性。此外,研究设计实验,分析了改进的算法模型的性能,并选择适当的数据库以分析算法模型的识别效果。该研究表明,该研究的算法在运动员的识别效果方面具有一定的改善,并且可以获得与人工设计特征匹配的识别效果,并且可以为随后的相关研究提供理论参考。

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