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Activity-Conditioned Continuous Human Pose Estimation for Performance Analysis of Athletes Using the Example of Swimming

机译:以活动为条件的连续人体姿势估计,以运动员为例进行游泳成绩分析

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In this paper we consider the problem of human pose estimation in real-world videos of swimmers. Swimming channels allow filming swimmers simultaneously above and below the water surface with a single stationary camera. These recordings can be used to quantitatively assess the athletes' performance. The quantitative evaluation, so far, requires manual annotations of body parts in each video frame. We therefore apply the concept of CNNs in order to automatically infer the required pose information. Starting with an off-the-shelf architecture, we develop extensions to leverage activity information - in our case the swimming style of an athlete - and the continuous nature of the video recordings. Our main contributions are threefold: (a) We apply and evaluate a fine-tuned Convolutional Pose Machine architecture as a baseline in our very challenging aquatic environment and discuss its error modes, (b) we propose an extension to input swimming style information into the fully convolutional architecture and (c) modify the architecture for continuous pose estimation in videos. With these additions we achieve reliable pose estimates with up to +16% more correct body joint detections compared to the baseline architecture.
机译:在本文中,我们考虑了在游泳运动员现实世界视频中的人类姿势估算问题。游泳渠道允许使用单个固定相机在水面上方和下方拍摄游泳者。这些录音可用于量化评估运动员的表现。到目前为止,定量评估需要手动注释每个视频帧中的身体部位。因此,我们应用CNN的概念,以便自动推断所需的姿势信息。从现成的架构开始,我们开发扩展以利用活动信息 - 在我们的案例中运动员的游泳风格 - 以及视频录制的持续性质。我们的主要贡献是三倍:(a)我们在我们挑战性水生环境中申请和评估一个微调卷积姿势机架构作为基线,并讨论其错误模式,(b)我们提出将游泳风格信息输入游泳风格信息的延伸完全卷积的架构和(c)修改视频中连续姿态估计的架构。通过这些添加,与基线架构相比,我们可以获得高达+16 \%的可靠姿势估计。

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