Prediction of Sports Aggression Behavior and Analysis of Sports Intervention Based on Swarm Intelligence Model

Sci. Program. Pub Date : 2022-01-04 DOI:10.1155/2022/2479939
Huijian Deng, Shijian Cao, Jingen Tang
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引用次数: 2

Abstract

In the process of sports, athletes often have aggressive behaviors because of their emotional fluctuations. This violent sports behavior has caused many serious bad effects. In order to reduce and solve this kind of public emergencies, this paper aims to create a swarm intelligence model for predicting people's sports attack behavior, takes the swarm intelligence algorithm as the core technology optimization model, and uses the Internet of Things and other technologies to recognize emotions on physiological signals, predict, and intervene sports attack behavior. The results show the following: (1) After the 50-fold cross-validation method, the results of emotion recognition are good, and the accuracy is high. Compared with other physiological electrical signals, EDA has the worst classification performance. (2) The recognition accuracy of the two methods using multimodal fusion is improved greatly, and the result after comparison is obviously better than that of single mode. (3) Anxiety, anger, surprise, and sadness are the most detected emotions in the model, and the recognition accuracy is higher than 80%. Sports intervention should be carried out in time to calm athletes' emotions. After the experiment, our model runs successfully and performs well, which can be optimized and tested in the next step.
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基于群体智能模型的运动攻击行为预测及运动干预分析
在运动过程中,运动员往往会因为情绪波动而产生攻击性行为。这种暴力的体育行为已经造成了许多严重的不良影响。为了减少和解决这类突发公共事件,本文旨在建立预测人们运动攻击行为的群体智能模型,以群体智能算法为核心技术优化模型,利用物联网等技术对生理信号进行情绪识别,预测和干预运动攻击行为。结果表明:(1)经过50倍交叉验证方法,情绪识别结果较好,准确率较高。与其他生理电信号相比,EDA的分类性能最差。(2)采用多模态融合的两种方法识别精度均有较大提高,对比结果明显优于单模态。(3)焦虑、愤怒、惊讶和悲伤是模型中检测到最多的情绪,识别准确率高于80%。及时进行体育干预,安抚运动员情绪。经过实验,我们的模型运行成功,性能良好,可以在下一步进行优化和测试。
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