Comparison of Machine Learning Algorithms for Ball Velocity Prediction in Baseball Pitcher using a Single Inertial Sensor

Kodai Kitagawa
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引用次数: 1

Abstract

Ball velocity of pitching is an important factor in baseball players. Commonly, ball velocity measurement requires specific devices such as radar gun. On the other hand, Gomaz et al. developed the accurate ball velocity measurement using two inertial sensors on pelvis and trunk. Recently, smartphone installed inertial sensor is popular device in daily life. Therefore, if ball velocity can be measured by only a single inertial sensor, baseball players can measure own ball velocity by only smartphone in daily life and various situations. Thus, the objective of this study is to propose and evaluate the ball velocity prediction method using the only a single inertial sensor. The proposed method predicts ball velocity using by a single inertial sensor and machine learning technique. Five machine learning algorithms (linear regression, support vector machine, gaussian process, artificial neural network, and M5P) predicted ball velocity by data of single inertial sensor, body height, and body weight. In this study,  Gomaz et al.’s public data for ball velocity and inertial data during pitching of baseball players were used for this investigation.  Sensor placement was either sternum or pelvis. Accuracy of prediction was evaluated by root mean square error (RMSE) between actual and predicted value via leave-one-out cross-validation. The results showed that greatest algorithm (M5P) could accurately predict ball velocity by only single inertial sensor and body parameters (RMSE < 2.0 mph). These results suggest that ball velocity can be measured by only single inertial sensor such as smartphone.
基于惯性传感器的投球速度预测的机器学习算法比较
投球速度是棒球运动员的一个重要因素。通常,球速度测量需要特定的设备,如雷达枪。另一方面,Gomaz等人利用骨盆和躯干上的两个惯性传感器开发了精确的球速测量。最近,安装惯性传感器的智能手机成为人们日常生活中普遍使用的设备。因此,如果只用一个惯性传感器就能测量出球的速度,那么棒球运动员在日常生活和各种情况下只用智能手机就能测量出自己的球的速度。因此,本研究的目的是提出并评估仅使用单个惯性传感器的球速度预测方法。提出了一种利用单惯性传感器和机器学习技术预测球速度的方法。五种机器学习算法(线性回归、支持向量机、高斯过程、人工神经网络和M5P)通过单惯性传感器、身高和体重数据预测球的速度。本研究使用了Gomaz等人公开的棒球运动员投球时的球速度和惯性数据进行研究。传感器放置在胸骨或骨盆。通过留一交叉验证,以实际值与预测值的均方根误差(RMSE)评价预测的准确性。结果表明,最优算法(M5P)仅通过单个惯性传感器和物体参数即可准确预测球速度(RMSE < 2.0 mph)。这些结果表明,仅通过智能手机等单一惯性传感器就可以测量球的速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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