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Automatic Detection of Faults in Race Walking: A Comparative Analysis of Machine-Learning Algorithms Fed with Inertial Sensor Data

机译:竞走中故障的自动检测:惯性传感器数据馈送的机器学习算法的比较分析

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The validity of results in race walking is often questioned due to subjective decisions in the detection of faults. This study aims to compare machine-learning algorithms fed with data gathered from inertial sensors placed on lower-limb segments to define the best-performing classifiers for the automatic detection of illegal steps. Eight race walkers were enrolled and linear accelerations and angular velocities related to pelvis, thighs, shanks, and feet were acquired by seven inertial sensors. The experimental protocol consisted of two repetitions of three laps of 250 m, one performed with regular race walking, one with loss-of-contact faults, and one with knee-bent faults. The performance of 108 classifiers was evaluated in terms of accuracy, recall, precision, F1-score, and goodness index. Generally, linear accelerations revealed themselves as more characteristic with respect to the angular velocities. Among classifiers, those based on the support vector machine (SVM) were the most accurate. In particular, the quadratic SVM fed with shank linear accelerations was the best-performing classifier, with an F1-score and a goodness index equal to 0.89 and 0.11, respectively. The results open the possibility of using a wearable device for automatic detection of faults in race walking competition.
机译:由于在故障检测中的主观决定,通常会质疑竞走结果的有效性。这项研究旨在比较机器学习算法和从下肢段放置的惯性传感器收集的数据,以定义自动检测非法踏板的最佳分类器。登记了八名种族助行器,并通过七个惯性传感器获取了与骨盆,大腿,小腿和脚有关的线性加速度和角速度。实验方案包括两次重复,每三圈进行250 m,一次重复进行常规的竞走,一次重复发生接触失误,另一次重复膝盖弯曲。对108个分类器的性能进行了评估,包括准确性,召回率,准确性,F1得分和良性指标。通常,线性加速度显示出相对于角速度的更多特征。在分类器中,基于支持向量机(SVM)的分类器最为准确。特别是,由小腿线性加速度提供的二次SVM是性能最高的分类器,F1得分和良性指数分别等于0.89和0.11。结果为使用可穿戴设备自动检测竞走比赛中的故障提供了可能。

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