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基于深度学习的水下跑动无标记二维运动学分析。

Markerless 2D kinematic analysis of underwater running: A deep learning approach.

机构信息

Faculty of Sport and Health Sciences, University of Jyväskylä, Finland.

Faculty of Sport and Health Sciences, University of Jyväskylä, Finland.

出版信息

J Biomech. 2019 Apr 18;87:75-82. doi: 10.1016/j.jbiomech.2019.02.021. Epub 2019 Mar 1.

Abstract

Kinematic analysis is often performed with a camera system combined with reflective markers placed over bony landmarks. This method is restrictive (and often expensive), and limits the ability to perform analyses outside of the lab. In the present study, we used a markerless deep learning-based method to perform 2D kinematic analysis of deep water running, a task that poses several challenges to image processing methods. A single GoPro camera recorded sagittal plane lower limb motion. A deep neural network was trained using data from 17 individuals, and then used to predict the locations of markers that approximated joint centres. We found that 300-400 labelled images were sufficient to train the network to be able to position joint markers with an accuracy similar to that of a human labeler (mean difference < 3 pixels, around 1 cm). This level of accuracy is sufficient for many 2D applications, such as sports biomechanics, coaching/training, and rehabilitation. The method was sensitive enough to differentiate between closely-spaced running cadences (45-85 strides per minute in increments of 5). We also found high test-retest reliability of mean stride data, with between-session correlation coefficients of 0.90-0.97. Our approach represents a low-cost, adaptable solution for kinematic analysis, and could easily be modified for use in other movements and settings. Using additional cameras, this approach could also be used to perform 3D analyses. The method presented here may have broad applications in different fields, for example by enabling markerless motion analysis to be performed during rehabilitation, training or even competition environments.

摘要

运动学分析通常通过结合放置在骨性标志上的反光标记的相机系统来进行。这种方法具有局限性(且通常昂贵),限制了在实验室之外进行分析的能力。在本研究中,我们使用了一种无标记的基于深度学习的方法来进行深水区跑步的 2D 运动学分析,这对图像处理方法提出了一些挑战。单个 GoPro 相机记录矢状面下肢运动。使用来自 17 个人的数据对深度神经网络进行训练,然后使用该网络预测近似关节中心的标记位置。我们发现,训练网络需要 300-400 张标记图像,以便能够以类似于人类标记者的精度(平均差异<3 像素,约 1 厘米)定位关节标记。这种精度水平足以满足许多 2D 应用,如运动生物力学、教练/培训和康复。该方法足够灵敏,可以区分接近的跑步步频(每分钟 45-85 步,每 5 步递增一次)。我们还发现,平均步长数据的测试-重测信度很高,会话间相关系数为 0.90-0.97。我们的方法代表了一种低成本、适应性强的运动学分析解决方案,并且可以很容易地修改用于其他运动和设置。使用额外的相机,这种方法也可以用于进行 3D 分析。这里提出的方法可能在不同领域有广泛的应用,例如在康复、训练甚至比赛环境中进行无标记运动分析。

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