IEEE Trans Cybern. 2014 Jun;44(6):882-93. doi: 10.1109/TCYB.2013.2274516. Epub 2013 Aug 15.
Video object tracking is widely used in many real-world applications, and it has been extensively studied for over two decades. However, tracking robustness is still an issue in most existing methods, due to the difficulties with adaptation to environmental or target changes. In order to improve adaptability, this paper formulates the tracking process as a ranking problem, and the PageRank algorithm, which is a well-known webpage ranking algorithm used by Google, is applied. Labeled and unlabeled samples in tracking application are analogous to query webpages and the webpages to be ranked, respectively. Therefore, determining the target is equivalent to finding the unlabeled sample that is the most associated with existing labeled set. We modify the conventional PageRank algorithm in three aspects for tracking application, including graph construction, PageRank vector acquisition and target filtering. Our simulations with the use of various challenging public-domain video sequences reveal that the proposed PageRank tracker outperforms mean-shift tracker, co-tracker, semiboosting and beyond semiboosting trackers in terms of accuracy, robustness and stability.
视频目标跟踪在许多实际应用中得到了广泛的应用,已经有二十多年的研究历史。然而,在大多数现有的方法中,跟踪的鲁棒性仍然是一个问题,因为这些方法很难适应环境或目标的变化。为了提高适应性,本文将跟踪过程表述为一个排序问题,并应用了 Google 所使用的知名网页排序算法 PageRank 算法。跟踪应用中的有标签和无标签样本分别类似于查询网页和要排序的网页。因此,确定目标相当于找到与现有有标签集最相关的无标签样本。我们从三个方面对传统的 PageRank 算法进行了修改,以适用于跟踪应用,包括图的构建、PageRank 向量的获取和目标的过滤。我们使用各种具有挑战性的公共视频序列进行的模拟实验表明,与均值漂移跟踪器、协同跟踪器、半监督跟踪器以及超越半监督跟踪器相比,所提出的 PageRank 跟踪器在准确性、鲁棒性和稳定性方面具有更好的性能。