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Automated detection and tracking of slalom paddlers from broadcast image sequences using cascade classifiers and discriminative correlation filters

机译:使用级联分类器和判别相关滤波器从广播图像序列中自动检测和追踪激流回旋桨

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This paper addresses the problem of automatic detection and tracking of slalom paddlers through a long sequence of sports broadcast images comprised of persistent view changes. In this context, the task of visual object tracking is particularly challenging due to frequent shot transitions (i.e. camera switches), which violate the fundamental spatial continuity assumption used by most of the state-of-the-art object tracking algorithms. The problem is further compounded by significant variations in object location, shape and appearance in typical sports scenarios where the athletes often move rapidly. To overcome these challenges, we propose a Periodically Prior Regularised Discriminative Correlation Filters (PPRDCF) framework, which exploits recent successful Discriminative Correlation Filters (DCF) with a periodic regularisation by a prior that constitutes a rich discriminative cascade classifier. The PPRDCF framework reduces the corruption of positive samples during online learning of the correlation filters by negative training samples. Our framework detects rapid shot transitions to reinitialise the tracker. It successfully recovers the tracker when the location, view or scale of the object changes or the tracker drifts from the object. The PPRDCF also provides the race context by detection of the ordered course obstacles and their spatial relations to the paddler. Our framework robustly outputs the evidence base pre-requisite to derived race kinematics for analysis of performance. Experiments are performed on task-specific dataset containing Canoe/Kayak Slalom race image sequences with successful results obtained.
机译:本文通过一长串由持续观看变化组成的体育广播图像,解决了自动检测和追踪激流回旋桨运动员的问题。在这种情况下,由于频繁的镜头过渡(即摄像机切换),视觉对象跟踪的任务特别具有挑战性,这违反了大多数最新的对象跟踪算法所使用的基本空间连续性假设。在运动员经常快速移动的典型运动场景中,对象位置,形状和外观的显着变化进一步加剧了该问题。为了克服这些挑战,我们提出了一个定期优先的正则化鉴别相关过滤器(PPRDCF)框架,该框架利用构成了一个丰富的鉴别级联分类器的先验来利用最近成功的具有周期性正则化的鉴别相关性过滤器(DCF)。 PPRDCF框架通过负训练样本减少了在相关滤波器在线学习期间正样本的破坏。我们的框架检测到快速的镜头过渡以重新初始化跟踪器。当对象的位置,视图或比例发生更改或跟踪器从对象漂移时,它将成功恢复跟踪器。 PPRDCF还通过检测有序的路线障碍及其与划桨者的空间关系来提供比赛背景。我们的框架会稳健地输出派生种族运动学所需的证据基础,以进行性能分析。在包含独木舟/皮划艇激流回旋竞赛图像序列的任务特定数据集上进行了实验,并获得了成功的结果。

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