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Robust Visual Tracking Via An Imbalance-Elimination Mechanism

机译:通过不平衡消除机制强大的视觉跟踪

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The competitive performances in visual tracking are achieved mostly by tracking-by-detection based approaches, whose accuracy highly relies on a binary classifier that distinguishes targets from distractors in a set of candidates. However, severe class imbalance, with few positives (e.g., targets) relative to negatives (e.g., backgrounds), leads to degrade accuracy of classification or increase bias of tracking. In this paper, we propose an imbalance-elimination mechanism, which adopts a multi-class paradigm and utilizes a novel candidate generation strategy. Specifically, our multi-class model assigns samples into one positive class and four proposed negative classes, naturally alleviating class imbalance. We define negative classes by introducing proportions of targets in samples, which values explicitly reveal relative scales between targets and backgrounds. Further-more, during candidate generation, we exploit such scale-aware negative patterns to help adjust searching areas of candidates to incorporate larger target proportions, thus more accurate target candidates are obtained and more positive samples are included to ease class imbalance simultaneously. Extensive experiments on standard benchmarks show that our tracker achieves favorable performance against the state-of-the-art approaches, and offers robust discrimination of positive targets and negative patterns.
机译:通过基于逐个检测的跟踪方法实现了视觉跟踪中的竞争性表现,其精度高度依赖于二进制分类器,该分类器区分从一组候选者中的分散组的目标。然而,严重的阶级不平衡,相对于负面的阳性(例如,目标),导致分类或增加跟踪偏差的准确性。在本文中,我们提出了一种不平衡的消除机制,其采用多级范式并利用新颖的候选生成策略。具体而言,我们的多级模型将样品分配为一个正类和四个建议的负类,自然缓解类别不平衡。我们通过引入样本中的目标比例来定义负类,这些值在明确地显示目标和背景之间的相对尺度。此外,在候选生成期间,我们利用这种尺度意识的负面图案来帮助调整候选者的搜索区域以结合较大的目标比例,因此获得更准确的目标候选者,并且包括更准确的目标候选物,并且包括更多的正样品以同时容易地缓解类别不平衡。关于标准基准的广泛实验表明,我们的跟踪器实现了对最先进的方法的良好性能,并提供了积极目标和负面模式的强大歧视。

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