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On-Line Detection and Segmentation of Sports Motions Using a Wearable Sensor

机译:使用可穿戴传感器的运动动作在线检测和分段

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摘要

In sports motion analysis, observation is a prerequisite for understanding the quality of motions. This paper introduces a novel approach to detect and segment sports motions using a wearable sensor for supporting systematic observation. The main goal is, for convenient analysis, to automatically provide motion data, which are temporally classified according to the phase definition. For explicit segmentation, a motion model is defined as a sequence of sub-motions with boundary states. A sequence classifier based on deep neural networks is designed to detect sports motions from continuous sensor inputs. The evaluation on two types of motions (soccer kicking and two-handed ball throwing) verifies that the proposed method is successful for the accurate detection and segmentation of sports motions. By developing a sports motion analysis system using the motion model and the sequence classifier, we show that the proposed method is useful for observation of sports motions by automatically providing relevant motion data for analysis.
机译:在运动动作分析中,观察是了解动作质量的前提。本文介绍了一种新颖的方法,该方法使用可穿戴式传感器检测和细分运动动作,以支持系统观察。为了方便分析,主要目标是自动提供运动数据,该运动数据根据相位定义在时间上进行了分类。对于显式分割,将运动模型定义为具有边界状态的子运动序列。设计基于深度神经网络的序列分类器,以从连续的传感器输入中检测运动运动。通过对两种类型的运动(足球踢和两手掷球)的评估,验证了所提出的方法在准确检测和分割运动运动方面是成功的。通过开发使用运动模型和序列分类器的运动分析系统,我们证明了该方法通过自动提供相关运动数据进行分析,可用于观察运动。

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