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基于深度学习的健美与健身运动对身体素质的影响

Effect of Bodybuilding and Fitness Exercise on Physical Fitness Based on Deep Learning.

作者信息

Sun Manman, Wang Lijun

机构信息

College of Sports and Leisure, Xi'an Physical Education University, Xi'an, 710000, Shaanxi, China.

College of Physical Education, Shaanxi Normal University, Xi'an, Shaanxi 710000, China.

出版信息

Emerg Med Int. 2022 Jun 21;2022:3891109. doi: 10.1155/2022/3891109. eCollection 2022.

Abstract

With the rapid development of society and economy, people's living standards are improving day by day, and increasingly attention is paid to physical health, which has set off a fitness upsurge. The purpose of this paper was to analyze the impact of bodybuilding exercise on physical fitness based on deep learning. It provides a reference for fitness enthusiasts to choose scientific and targeted exercise methods, and provides a theoretical basis for the promotion of bodybuilding and fitness. This paper first gives a general introduction to deep learning and adds image segmentation technology to design experiments for bodybuilding and fitness. The experiment was divided into groups A and B, and control group C. In this paper, recurrent neural network and gated recurrent neural network are introduced to compare and analyze the data, and the stability of data processing with different activation functions is compared. The data results show that under the scientific and reasonable arrangement of exercise conditions, bodybuilding and fitness exercises have a corresponding positive effect on the body shape and posture of the subjects. It is more practical to choose a combination of aerobic and anaerobic exercise. In this paper, based on the deep learning algorithm, compared with the recurrent neural network, the gated recurrent neural network is more suitable for processing sequence problems. In the experimental analysis part, this paper compares and analyzes the experimental results of the data under different activation functions, sigmoid function, and tanh function. It is found that the tanh activation function and the gated recurrent neural network are more stable for data processing. The highest AUC value of the traditional recurrent neural network differs by 0.78 from the highest AUC value of the gated recurrent neural network. The data analysis results are in line with the actual situation.

摘要

随着社会经济的快速发展,人们的生活水平日益提高,对身体健康的关注也越来越多,这引发了一股健身热潮。本文旨在基于深度学习分析健美运动对身体素质的影响。它为健身爱好者选择科学、有针对性的运动方法提供参考,并为健美健身的推广提供理论依据。本文首先对深度学习进行了概述,并引入图像分割技术来设计健美健身实验。实验分为A组和B组以及对照组C。本文引入循环神经网络和门控循环神经网络对数据进行比较分析,并比较不同激活函数下数据处理的稳定性。数据结果表明,在科学合理的运动条件安排下,健美健身运动对受试者的体型和姿态有相应的积极影响。选择有氧和无氧运动相结合更具实用性。本文基于深度学习算法,与循环神经网络相比,门控循环神经网络更适合处理序列问题。在实验分析部分,本文对不同激活函数、sigmoid函数和tanh函数下的数据实验结果进行了比较分析。发现tanh激活函数和门控循环神经网络在数据处理方面更稳定。传统循环神经网络的最高AUC值与门控循环神经网络的最高AUC值相差0.78。数据分析结果符合实际情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a401/9239833/08704cf25ec0/EMI2022-3891109.001.jpg

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