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Automatic Classification of Sub-Techniques in Classical Cross-Country Skiing Using a Machine Learning Algorithm on Micro-Sensor Data

机译:基于微传感器数据的机器学习算法对经典越野滑雪子技术的自动分类

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摘要

The automatic classification of sub-techniques in classical cross-country skiing provides unique possibilities for analyzing the biomechanical aspects of outdoor skiing. This is currently possible due to the miniaturization and flexibility of wearable inertial measurement units (IMUs) that allow researchers to bring the laboratory to the field. In this study, we aimed to optimize the accuracy of the automatic classification of classical cross-country skiing sub-techniques by using two IMUs attached to the skier’s arm and chest together with a machine learning algorithm. The novelty of our approach is the reliable detection of individual cycles using a gyroscope on the skier’s arm, while a neural network machine learning algorithm robustly classifies each cycle to a sub-technique using sensor data from an accelerometer on the chest. In this study, 24 datasets from 10 different participants were separated into the categories training-, validation- and test-data. Overall, we achieved a classification accuracy of 93.9% on the test-data. Furthermore, we illustrate how an accurate classification of sub-techniques can be combined with data from standard sports equipment including position, altitude, speed and heart rate measuring systems. Combining this information has the potential to provide novel insight into physiological and biomechanical aspects valuable to coaches, athletes and researchers
机译:经典越野滑雪中子技术的自动分类为分析户外滑雪的生物力学方面提供了独特的可能性。由于可穿戴惯性测量单元(IMU)的小型化和灵活性,这使当前的研究成为可能,该惯性测量单元允许研究人员将实验室带到现场。在这项研究中,我们旨在通过使用连接到滑雪者手臂和胸部的两个IMU和机器学习算法来优化经典越野滑雪子技术的自动分类的准确性。我们的方法的新颖之处在于,使用滑雪者手臂上的陀螺仪可以可靠地检测单个周期,而神经网络机器学习算法则使用来自胸部加速度计的传感器数据将每个周期可靠地分类为子技术。在这项研究中,来自10个不同参与者的24个数据集被分为训练数据,验证数据和测试数据。总体而言,我们在测试数据上实现了93.9%的分类精度。此外,我们说明了如何将子技术的准确分类与标准运动设备(包括位置,高度,速度和心率测量系统)中的数据相结合。结合这些信息有可能为生理,生物力学方面提供新颖的见解,对教练,运动员和研究人员有价值

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