Starts Better and Ends Better: A Target Adaptive Image Signature Tracker

Xingchao Liu, Ce Li, Hongren Wang, Xiantong Zhen, Baochang Zhang, Qixiang Ye
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Abstract

Correlation filter (CF) trackers have achieved outstanding performance in visual object tracking tasks, in which the cosine mask plays an essential role in alleviating boundary effects caused by the circular assumption. However, the cosine mask imposes a larger weight on its center position, which greatly affects CF trackers, that is, their performance will drop significantly if a bad starting point happens to occur. To address the above issue, we propose a target adaptive image signature (TaiS) model to refine the starting point in each frame for CF trackers. Specifically, we incorporate the target priori into the image signature to build a target-specific saliency map, and iteratively refine the starting point with a closed-form solution during the tracking process. As a result, our TaiS is able to find a better starting point close to the center of targets; more importantly, it is independent of specific CF trackers and can efficiently improve their performance. Experiments on two benchmark datasets, i.e., OTB100 and UAV123, demonstrate that our TaiS consistently achieves high performance and updates the state of the arts in visual tracking. The source code of our approach will be made publicly available.
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开始更好,结束更好:目标自适应图像签名跟踪器
相关滤波(CF)跟踪器在视觉目标跟踪任务中取得了优异的性能,其中余弦掩模在缓解圆形假设引起的边界效应方面起着至关重要的作用。但是,余弦掩模对其中心位置施加了较大的权重,这对CF跟踪器的影响很大,即如果出现不好的起点,其性能会显著下降。为了解决上述问题,我们提出了一种目标自适应图像签名(TaiS)模型,以细化CF跟踪器每帧中的起始点。具体而言,我们将目标先验纳入图像签名中,构建目标特定的显著性映射,并在跟踪过程中迭代地使用封闭形式解来优化起点。因此,我们的tai能够在靠近目标中心的地方找到更好的起点;更重要的是,它独立于特定的CF跟踪器,可以有效地提高它们的性能。在两个基准数据集(即OTB100和UAV123)上的实验表明,我们的TaiS始终如一地实现了高性能,并更新了视觉跟踪的最新状态。我们的方法的源代码将会公开。
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