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Automatic Classification of Strike Techniques Using Limb Trajectory Data

机译:使用肢体轨迹数据自动分类打击技术

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摘要

The classification of trajectory data is required in a wide variety of movement tracking experiments. Automatic classification using machine learning techniques has the potential to greatly increase efficiency and reliability of these studies. Here, we apply supervised classification algorithms on a dataset obtained through a kickboxing experiment to classify the limb and technique that was used for each strike as well as the expertise of the person performing the strike. Beginner and expert kickboxers were asked to strike a boxing bag from several distances, producing a dataset of approximately 4000 strike trajectories. These trajectories were classified using the K-nearest neighbours (KNN) and multi-class linear support vector classification (SVC). We show that both of these algorithms are capable of correctly classifying the limb used for the strike with ~99% prediction accuracy. Both algorithms could classify the techniques used with ~86% accuracy. The accuracy of technique classification was improved even further by applying hierarchical classification, classifying techniques separately for each limb. Only 10% of the dataset was required as training set to approach the observed prediction accuracy. Finally, KNN was capable of classifying the strikes by skill level with 73.3% accuracy. These findings demonstrate the potential of using supervised classification on complex limb trajectory datasets.
机译:在各种各样的运动跟踪实验中都需要对轨迹数据进行分类。使用机器学习技术进行自动分类有可能极大地提高这些研究的效率和可靠性。在这里,我们对通过自由搏击实验获得的数据集应用监督分类算法,以对用于每次罢工的肢体和技术以及进行罢工的人员的专业知识进行分类。初学者和专业的跆拳道运动员被要求从多个距离击打拳击袋,从而产生大约4000个击打轨迹的数据集。使用K最近邻(KNN)和多类线性支持向量分类(SVC)对这些轨迹进行分类。我们证明这两种算法都能够正确分类用于打击的肢体,其预测精度约为99%。两种算法都可以对使用的技术进行分类,准确度约为86%。通过应用分层分类(针对每个肢体分别分类技术),可以进一步提高技术分类的准确性。只需10%的数据集作为训练集即可达到观察到的预测准确性。最终,KNN能够按技能水平对罢工进行分类,准确率达到73.3%。这些发现证明了在复杂肢体轨迹数据集上使用监督分类的潜力。

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