Single Object Trackers in OpenCV: A Benchmark

Adnan Brdjanin, Nadja Dardagan, Dzemil Dzigal, Amila Akagic
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引用次数: 8

Abstract

Object tracking is one of the fundamental tasks in computer vision. It is used almost everywhere: human-computer interaction, video surveillance, medical treatments, robotics, smart cars, etc. Many object tracking methods have been published in recent scientific publications. However, many questions still remain unanswered, such as, which object tracking method to choose for a particular application considering some specific characteristics of video content or which method will perform the best (quality-wise) and which one will have the best performance? In this paper, we provide some insights into how to choose an object tracking method from the widespread OpenCV library. We provide benchmarking results on the OTB-100 dataset by evaluating the eight trackers from the OpenCV library. We use two evaluation methods to evaluate the robustness of each algorithm: OPE and SRE combined with Precision and Success Plot.
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OpenCV中的单对象跟踪器:基准测试
目标跟踪是计算机视觉的基本任务之一。它几乎无处不在:人机交互、视频监控、医疗、机器人、智能汽车等。在最近的科学出版物上发表了许多目标跟踪方法。然而,许多问题仍然没有得到解答,例如,考虑到视频内容的某些特定特征,为特定应用程序选择哪种对象跟踪方法,或者哪种方法将表现最佳(质量方面),哪种方法将具有最佳性能?在本文中,我们提供了一些关于如何从广泛的OpenCV库中选择对象跟踪方法的见解。我们通过评估来自OpenCV库的八个跟踪器,在OTB-100数据集上提供基准测试结果。我们使用两种评估方法来评估每种算法的鲁棒性:OPE和SRE结合Precision和Success Plot。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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