基于深度学习的竞技运动训练肢体运动检测方法

Yichen Wang, Pei Zhang, Yi Wang
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摘要

人体姿态检测容易受到外界环境的影响,导致肢体特征提取结果模糊。为了提高人体运动检测的准确性和速度,本文提出了一种基于深度学习的竞技体育训练运动检测方法。采用深度学习算法中的双并行卷积网络算法对采集到的动作信息进行处理,提取人体动作特征,大大减小了操作规模;借助运动力学理论,计算运动过程中的力学参数,消除异常值,降低特征维数;借助运动惯性传感器和关节自由度,获得肢体运动检测结果。实验结果表明,该方法对不同运动动作的平均识别率为99.5%,平均检测时间为148 ms,具有良好的应用性能。
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Detection method of limb movement in competitive sports training based on deep learning
Human posture detection is easily affected by the external environment, resulting in blurred results of limb feature extraction. In order to improve the accuracy and speed of human motion detection, this paper proposes a deep learning-based motion detection method in competitive sports training. The double parallel convolution network algorithm in the depth learning algorithm is used to process the collected action information, extract the body action features, and greatly reduce the operation scale; With the help of the theory of motion mechanics, the mechanical parameters in the motion process are calculated to eliminate outliers and reduce feature dimensions; With the help of motion inertial sensors and joint degrees of freedom, the limb motion detection results are obtained. The experimental results show that the average recognition rate of the method for different motion actions is 99.5%, and the average detection time is 148 ms, with good application performance.
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