School of Computer and Information Science, Southwest University, Chongqing 400700, China.
Sensors (Basel). 2021 Oct 8;21(19):6685. doi: 10.3390/s21196685.
Compared with optical sensors, wearable inertial sensors have many advantages such as low cost, small size, more comprehensive application range, no space restrictions and occlusion, better protection of user privacy, and more suitable for sports applications. This article aims to solve irregular actions that table tennis enthusiasts do not know in actual situations. We use wearable inertial sensors to obtain human table tennis action data of professional table tennis players and non-professional table tennis players, and extract the features from them. Finally, we propose a new method based on multi-dimensional feature fusion convolutional neural network and fine-grained evaluation of human table tennis actions. Realize ping-pong action recognition and evaluation, and then achieve the purpose of auxiliary training. The experimental results prove that our proposed multi-dimensional feature fusion convolutional neural network has an average recognition rate that is 0.17 and 0.16 higher than that of CNN and Inception-CNN on the nine-axis non-professional test set, which proves that we can better distinguish different human table tennis actions and have a more robust generalization performance. Therefore, on this basis, we have better realized the enthusiast of table tennis the purpose of the action for auxiliary training.
与光学传感器相比,可穿戴惯性传感器具有成本低、体积小、应用范围更全面、无空间限制和遮挡、更好地保护用户隐私等优点,更适合运动应用。本文旨在解决乒乓球爱好者在实际情况下不知道的不规则动作。我们使用可穿戴惯性传感器获取专业乒乓球运动员和非专业乒乓球运动员的人体乒乓球动作数据,并从中提取特征。最后,我们提出了一种基于多维特征融合卷积神经网络和乒乓球动作细粒度评价的新方法,实现乒乓球动作识别和评价,从而达到辅助训练的目的。实验结果证明,我们提出的多维特征融合卷积神经网络在九轴非专业测试集上的平均识别率分别比 CNN 和 Inception-CNN 高出 0.17 和 0.16,这证明我们可以更好地区分不同的人体乒乓球动作,具有更强的泛化性能。因此,在此基础上,我们更好地实现了乒乓球爱好者辅助训练的目的。