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A quantitative attribute-based benchmark methodology for single-target visual tracking

机译:用于单目标视觉跟踪的基于定量属性的基准方法

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In the past several years, various visual object tracking benchmarks have been proposed, and some of them have been used widely in numerous recently proposed trackers. However, most of the discussions focus on the overall performance, and cannot describe the strengths and weaknesses of the trackers in detail. Meanwhile, several benchmark measures that are often used in tests lack convincing interpretation. In this paper, 12 frame-wise visual attributes that reflect different aspects of the characteristics of image sequences are collated, and a normalized quantitative formulaic definition has been given to each of them for the first time. Based on these definitions, we propose two novel test methodologies, a correlation-based test and a weight-based test, which can provide a more intuitive and easier demonstration of the trackers’ performance for each aspect. Then these methods have been applied to the raw results from one of the most famous tracking challenges, the Video Object Tracking (VOT) Challenge 2017. From the tests, most trackers did not perform well when the size of the target changed rapidly or intensely, and even the advanced deep learning based trackers did not perfectly solve the problem. The scale of the targets was not considered in the calculation of the center location error; however, in a practical test, the center location error is still sensitive to the targets’ changes in size.
机译:在过去几年中,已经提出了各种视觉对象跟踪基准,其中一些在众多最近提出的跟踪器中广泛使用。然而,大多数讨论都注重整体性能,无法详细描述跟踪器的优势和弱点。同时,经常用于测试的几项基准措施缺乏令人信服的解释。在本文中,对反映图像序列特性的不同方面的12个帧智视觉属性被整理,并且首次向它们中的每一个给予归一化的定量公式定义。基于这些定义,我们提出了两种新型测试方法,基于相关的测试和基于体重的测试,可以为每个方面提供更直观和更容易的跟踪性能的演示。然后,这些方法已应用于最着名的跟踪挑战之一,视频对象跟踪(VOT)挑战2017年。从测试中,当目标的大小迅速或强烈地变化时,大多数跟踪器都没有表现良好。即使是先进的基于深度学习的跟踪器并没有完全解决问题。在计算中心位置误差计算中不考虑目标的规模;但是,在实际测试中,中心位置误差对目标的大小的变化仍然敏感。

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