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Real-Time Collection Method of Athletes’ Abnormal Training Data Based on Machine Learning

机译:基于机器学习的运动员异常培训数据的实时收集方法

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Real-time collection of athletes’ abnormal training data can improve the training effect of athletes. This paper studies the real-time collection method of athletes’ abnormal training data based on machine learning. The main motivation of this paper is to collect the athletes’ abnormal training data in time, which can help to evaluate and improve the training effect. Four sensor nodes are arranged in the upper and lower limbs of athletes to collect the angular velocity, acceleration, and magnetic field strength data of athletes in training state. The data are sent to the data transmission base station through wireless sensors, and the data transmission base station transmits the data to the data processing terminal. The data processing terminal calculates the difference between the sample values of each sensor to obtain the data dispersion of each sensor. The features of each dimension data in a time domain and frequency domain are obtained by using the dispersion degree to construct 32-dimensional feature vectors, and the extracted feature vectors are input into the hidden Markov model. The forward algorithm is used to obtain the probability of the final observation sequence, so as to realize the final collection of athletes’ abnormal training data. The experimental results show that the accuracy and recall rate of the abnormal data collected by this method is higher than 98%, which requires less time.
机译:运动员异常培训数据的实时收集可以提高运动员的培训效果。本文研究了基于机器学习的运动员异常培训数据的实时收集方法。本文的主要动机是收集运动员的异常培训数据,这有助于评估和改善培训效果。四个传感器节点布置在运动员的上肢和下肢中,以收集训练状态的运动员的角速度,加速度和磁场强度数据。数据通过无线传感器发送到数据传输基站,并且数据传输基站将数据发送到数据处理终端。数据处理终端计算每个传感器的样本值之间的差异,以获得每个传感器的数据色散。通过使用分散度构造32维特征向量而获得时域和频域中的每个维度数据的特征,并且提取的特征向量被输入到隐藏的马尔可夫模型中。前向算法用于获得最终观察序列的概率,以实现运动员异常训练数据的最终收集。实验结果表明,该方法收集的异常数据的准确度和召回率高于98%,这需要更少的时间。

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