基于姿态估计的竞技游泳运动员运动参数提取

D. Zecha, C. Eggert, R. Lienhart
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引用次数: 9

摘要

在竞技游泳领域,运动参数的定量评估是教练员的重要工具,也是一项劳动密集型的工作。我们提出了一个系统,该系统能够从运动员的视频片段中自动提取许多运动学参数,如中风频率、踢腿率和中风特定的周期内参数。虽然这项任务原则上可以通过人体姿势估计来解决,但由于气泡、飞溅、光反射和光折射引起的永久变化的自遮挡和严重噪声,问题变得更加严重。目前的姿态估计方法无法在这些条件下提供必要的定位精度,以实现对所有所需运动学参数的准确估计。本文利用深度神经网络人体姿态估计器将运动参数推导问题简化为关键帧检测问题。我们证明了我们可以正确地检测关键帧,其精度与人类注释性能相当。从正确定位的关键帧中,可以成功地推断出上述参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pose Estimation for Deriving Kinematic Parameters of Competitive Swimmers
In the field of competitive swimming a quantitative evaluation of kinematic parameters is a valuable tool for coaches but also a labor intensive task. We present a system which is able to automate the extraction of many kinematic parameters such as stroke frequency, kick rates and stroke-specific intra-cyclic parameters from video footage of an athlete. While this task can in principle be solved by human pose estimation, the problem is exacerbated by permanently changing self-occlusion and severe noise caused by air bubbles, splashes, light reflection and light refraction. Current approaches for pose estimation are unable to provide the necessary localization precision under these conditions in order to enable accurate estimates of all desired kinematic parameters. In this paper we reduce the problem of kinematic parameter derivation to detecting key frames with a deep neural network human pose estimator. We show that we can correctly detect key frames with a precision which is on par with the human annotation performance. From the correctly located key frames, aforementioned parameters can be successfully inferred.
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