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A learning-based tracking for diving motions

机译:基于学习的潜水动作跟踪

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摘要

A learning-based tracking algorithm for diving motions is presented in this paper. In this algorithm, a complex diving motion is considered as the combination of several simple sub-motions. The contour of the athlete in each sub-motion is represented by B-spline snake, which can be fitted to the real body contour by a recursive curve-fitting algorithm. By learning from the videos in a training set, the initial contour templates for each sub-motion are set up and each possible frame where a new sub-motion begins is found out, which allows the possibility of whole motion tracking. Experiments demonstrate that the proposed algorithm is robust and efficient in diving motions tracking.
机译:本文提出了一种基于学习的跳水运动跟踪算法。在此算法中,复杂的跳水动作被视为几个简单的子动作的组合。每个子动作中运动员的轮廓都由B样条蛇表示,可以通过递归曲线拟合算法将其拟合到真实身体轮廓上。通过从训练集中的视频中学习,可以设置每个子动作的初始轮廓模板,并可以找到开始新的子动作的每个可能的帧,从而可以进行整个动作跟踪。实验表明,该算法在潜水运动跟踪中具有鲁棒性和有效性。

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