Abstract

The use of smart sports equipment and body sensory systems supervising daily sports training is gradually emerging in professional and amateur sports; however, the problem of processing large amounts of data from sensors used in sport and discovering constructive knowledge is a novel topic and the focus of our research. In this article, we investigate golf swing data classification methods based on varieties of representative convolutional neural networks (deep convolutional neural networks) which are fed with swing data from embedded multi-sensors, to group the multi-channel golf swing data labeled by hybrid categories from different golf players and swing shapes. In particular, four convolutional neural classifiers are customized: “GolfVanillaCNN” with the convolutional layers, “GolfVGG” with the stacked convolutional layers, “GolfInception” with the multi-scale convolutional layers, and “GolfResNet” with the residual learning. Testing on the real-world swing dataset sampled from the system integrating two strain gage sensors, three-axis accelerometer, and three-axis gyroscope, we explore the accuracy and performance of our convolutional neural network–based classifiers from two perspectives: classification implementations and sensor combinations. Besides, we further evaluate the performance of these four classifiers in terms of classification accuracy, precision–recall curves, and F1 scores. These common classification indicators illustrate that our convolutional neural network–based classifiers can basically group the golf swing predefined by the combination of shapes and golf players correctly and outperform support vector machine method representing traditional classification methods.

Highlights

  • Advances in technology and data science are changing the way of practicing and training in recreational, amateur, and professional sports

  • The advanced model architecture has less effect on the classification performance in terms of accuracy that reaches to 95%, which means all of them are acceptable in golf swing classification

  • The strain gage sensors, and the accelerometer are effective in golf swing classification, while the vulnerable gyroscope could fail on account of its unpredicted invalidity; it is positive that convolutional neural network (CNN)-based model can label data properly with even one single sensor

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Summary

Introduction

Advances in technology and data science are changing the way of practicing and training in recreational, amateur, and professional sports. The collection of sports performance data has become easier and more reliable with the development of miniature, lightweight sensors, sensor networks, and communication technologies. The key issue now is how to analyze the large amounts of (streaming) data from the above-mentioned wearable devices. The processing requirements for sensor signals and data have become more demanding, both in volume and time constraints.

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