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Robust Human Tracking to Occlusion in Crowded Scenes

机译:强大的人类跟踪到拥挤的场景中的闭塞

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摘要

Human tracking in crowded scenes is a challenging problem because occlusion is frequently occurred. In this paper, we propose an online human tracking method which can handle occlusion effectively. Our method automatically changes a learning rate for updating tracking model according to the situation. If the tracking target is under occlusion, the learning rate decreases to reduce the influence of occlusion. However, the similarity score decreases by scale change of a tracking target as well as occlusion. To judge the occlusion or scale change, the similarity score on the Log-Polar coordinate is used. Furthermore, the size of search region is also changed according to the information about occlusion at previous frame. Experiments using the PETS2009 dataset show that our method improves tracking accuracy in crowded scenes.
机译:人类跟踪拥挤的场景是一个具有挑战性的问题,因为经常发生闭塞。在本文中,我们提出了一种在线人体跟踪方法,可以有效地处理遮挡。我们的方法根据情况自动更改用于更新跟踪模型的学习速率。如果跟踪目标在遮挡下,则学习率降低以减少闭塞的影响。然而,相似度得分通过跟踪目标的比例变化和遮挡而降低。为了判断闭塞或缩放变化,使用了日志极性坐标上的相似度分数。此外,还根据关于先前帧的闭塞的信息改变搜索区域的大小。使用PETS2009数据集的实验表明,我们的方法提高了拥挤场景中的跟踪精度。

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