Efficient Version-Space Reduction for Visual Tracking

Kourosh Meshgi, Shigeyuki Oba, S. Ishii
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引用次数: 2

Abstract

Discriminative trackers, employ a classification approach to separate the target from its background. To cope with variations of the target shape and appearance, the classifier is updated online with different samples of the target and the background. Sample selection, labeling and updating the classifier is prone to various sources of errors that drift the tracker. We introduce the use of an efficient version space shrinking strategy to reduce the labeling errors and enhance its sampling strategy by measuring the uncertainty of the tracker about the samples. The proposed tracker, utilize an ensemble of classifiers that represents different hypotheses about the target, diversify them using boosting to provide a larger and more consistent coverage of the version-space and tune the classifiers' weights in voting. The proposed system adjusts the model update rate by promoting the co-training of the short-memory ensemble with a long-memory oracle. The proposed tracker outperformed state-of-the-art trackers on different sequences bearing various tracking challenges.
有效的版本空间缩减视觉跟踪
判别跟踪器采用分类方法将目标与其背景分离开来。为了应对目标形状和外观的变化,分类器使用目标和背景的不同样本在线更新。样本选择、标记和更新分类器容易受到各种错误来源的影响,从而使跟踪器漂移。我们引入了一种有效的版本空间收缩策略,通过测量跟踪器对样本的不确定性来减少标记误差并增强其采样策略。所提出的跟踪器,利用代表目标的不同假设的分类器的集合,使用提升来多样化它们,以提供更大、更一致的版本空间覆盖,并在投票中调整分类器的权重。该系统通过促进短记忆集合与长记忆集合的协同训练来调整模型更新速率。所提出的跟踪器在承载各种跟踪挑战的不同序列上优于最先进的跟踪器。
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