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Key-Pose Prediction in Cyclic Human Motion

机译:循环人体运动中的关键姿态预测

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In this paper we study the problem of estimating inner cyclic time intervals within repetitive motion sequences of top-class swimmers in a swimming channel. Interval limits are given by temporal occurrences of key-poses, i.e. distinctive postures of the body. A key-pose is defined by means of only one or two specific features of the complete posture. It is often difficult to detect such subtle features directly. We therefore propose the following method: Given that we observe the swimmer from the side, we build a pictorial structure of pose lets to robustly identify random support poses within the regular motion of a swimmer. We formulate a maximum likelihood model which predicts a key-pose given the occurrences of multiple support poses within one stroke. The maximum likelihood can be extended with prior knowledge about the temporal location of a key-pose in order to improve the prediction recall. We experimentally show that our models reliably and robustly detect key-poses with a high precision and that their performance can be improved by extending the framework with additional camera views.
机译:在本文中,我们研究了游泳道中顶级游泳者重复运动序列内的内循环时间间隔的问题。间隔限制由关键姿势的时间发生给出,即身体的独特姿势。通过完整姿势的只有一个或两个特定功能来定义键姿势。通常难以直接检测这种微妙的特征。因此,我们提出了以下方法:鉴于我们从一侧观察游泳运动员,我们建立一个姿势的图形结构,让我们鲁布布利地识别随机支持在游泳运动员的正常运动内。我们制定最大似然模型,其预测键姿势给出了一个笔划内部的多个支持的发生。可以使用关于键姿势的时间位置的先验知识来扩展最大可能性,以改善预测召回。我们通过实验表明,我们的模型可靠且强大地检测高精度的键姿势,并且通过将框架扩展到额外的相机视图,可以提高它们的性能。

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