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Real-time keypoint-based object tracking via online learning

机译:通过在线学习的基于实时关键点的对象跟踪

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Object tracking is a well-studied and challenging problem in computer vision and has many practical applications. Recently many efficient keypoint-based tracking algorithms have been proposed since the promising of effective keypoint descriptors. These methods focus on predicting the object homography transformation using a geometric estimation algorithm such as RANSAC. In addition, in these approaches the object model is often trained offline. Thus, they are not adaptive to the object appearance changes. In the paper, we propose a novel keypointbased tracking algorithm using a online boosting framework to learn the most prominent keypoints and cluster them into patterns. The object model is represented as a combination of weighted keypoint clusters and learned through a online procedure. Our method takes advantage of binary keypoint description for clustering and thus runs at real-time. The approach focuses on predicting the target object location and is adaptive to the object appearance changes. The experimental results show that our method is robuster than other state-of-the-art keypoint-based tracking algorithms on some challenging video clips.
机译:对象跟踪是计算机视觉中的良好研究和具有挑战性的问题,并且具有许多实际应用。最近,已经提出了许多基于关键点的跟踪算法,因为有效的关键点描述符的承诺。这些方法侧重于使用诸如Ransac等几何估计算法预测对象的相同转换。此外,在这些方法中,对象模型通常触摸下划线。因此,它们不适应对象外观变化。在本文中,我们使用在线升级框架提出了一种新颖的关键字跟踪算法,以了解最突出的关键点并将它们群集成模式。对象模型表示为加权键盘集群的组合,并通过在线过程学习。我们的方法利用二进制键点描述进行群集,从而在实时运行。该方法侧重于预测目标对象位置,并且对物体外观变化是自适应的。实验结果表明,我们的方法是比某些具有挑战性的视频剪辑的基于最先进的基于Keypoint的跟踪算法的robuster。

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