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Exploring structure for long-term tracking of multiple objects in sports videos

机译:长期跟踪体育视频中多个对象的结构

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摘要

In this paper, we propose a novel approach for exploiting structural relations to track multiple objects that may undergo long-term occlusion and abrupt motion. We use a model-free approach that relies only on annotations given in the first frame of the video to track all the objects online, i.e. without knowledge from future frames. We initialize a probabilistic Attributed Relational Graph (ARC) from the first frame, which is incrementally updated along the video. Instead of using the structural information only to evaluate the scene, the proposed approach considers it to generate new tracking hypotheses. In this way, our method is capable of generating relevant object candidates that are used to improve or recover the track of lost objects. The proposed method is evaluated on several videos of table tennis, volleyball, and on the ACASVA dataset. The results show that our approach is very robust, flexible and able to outperform other state-of-the-art methods in sports videos that present structural patterns.
机译:在本文中,我们提出了一种利用结构关系来跟踪可能经历长期遮挡和突然运动的多个对象的新颖方法。我们使用一种无​​模型的方法,该方法仅依赖于视频第一帧中给出的注释来在线跟踪所有对象,即无需了解未来的帧。我们从第一帧初始化一个概率属性关系图(ARC),该属性图会随着视频而不断更新。所提出的方法不是仅使用结构信息来评估场景,而是认为它可以生成新的跟踪假设。通过这种方式,我们的方法能够生成相关的候选对象,这些候选对象用于改善或恢复丢失对象的轨迹。在乒乓球,排球和ACASVA数据集的多个视频上对提出的方法进行了评估。结果表明,我们的方法非常健壮,灵活,并且能够在呈现结构模式的体育视频中胜过其他最新方法。

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