基于惯性传感器的轮椅篮球动作分类

R. Hasegawa, A. Uchiyama, T. Higashino
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引用次数: 2

摘要

在轮椅篮球运动中,轮椅动作是最基本、最重要的动作,运动员们一直在努力提高轮椅动作技术。然而,由于缺乏量化的指标,机动质量的评估是困难的。为了支持运动员在WB中的技术进步,本文提出了一种基于惯性传感器的机动分类方法。为此,惯性传感器固定在轮椅的左右轴上,并使用角速度检测机动的发生。WB中的主要机动活动分为PUSH和STOP两种。首先,由于机动产生的车轮旋转会导致角速度的急剧变化,我们的方法通过角速度的局部最大值/最小值来分割机动周期的候选对象。然后,根据阈值对机动动作进行分类。为了进行评估,我们收集了6名玩家的真实数据。结果表明,该方法的平均查全率为88.0%,查准率为87.6%。进一步验证了分类结果对机动质量评价的有效性。
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Maneuver Classification in Wheelchair Basketball Using Inertial Sensors
In wheelchair basketball (WB), players are making efforts to improve the technique of wheelchair maneuver since it is the most basic and important action in every situation. However, the assessment of maneuver quality is difficult due to the lack of quantitative metrics. In this paper, in order to support the technical improvement of athletes in WB, we propose a maneuver classification method using inertial sensors. For this purpose, inertial sensors are fixed to the left and right axles of the wheelchair and the occurrence of maneuvers is detected using the angular velocity. Major maneuver activities in WB are classified into 2 types: PUSH and STOP. First, our method segments candidates of maneuver periods by the local maximum/minimum of the angular velocity since the rotation of the wheel generated by maneuvering leads to sharp changes of the angular velocity. Then, based on thresholds, we classify maneuver actions. For evaluation, we collected real data from 6 players. From the result, we confirmed our method achieves the average recall and precision of 88.0% and 87.6%, respectively. Furthermore, we confirmed the effectiveness of the classification results for the assessment of maneuver quality.
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