跟踪小而快速移动的物体:一个基准

Zhewen Zhang, Fuliang Wu, Yuming Qiu, Jingdong Liang, Shuiwang Li
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引用次数: 5

摘要

随着越来越多的大规模数据集用于训练,视觉跟踪近年来取得了很大的进展。然而,目前该领域的研究主要集中在对通用目标的跟踪上。在本文中,我们提出了TSFMO,一个\textbf{跟踪}\textbf{小}和\textbf{快}\textbf{移动}\textbf{对象}的基准。该基准旨在鼓励研究开发新颖和准确的方法,特别是针对这一具有挑战性的任务。TSFMO由250个序列组成,总帧数约为50k。这些序列中的每一帧都用一个边界框仔细地手工标注。据我们所知,TSFMO是第一个专门用于跟踪小型和快速移动物体的基准,特别是与运动相关的物体。为了了解现有方法的性能,并为TSFMO的未来研究提供比较,我们在基准上广泛评估了20种最先进的跟踪器。评估结果表明,改进对小而快速运动目标的跟踪需要付出更多的努力。此外,为了鼓励未来的研究,我们提出了一种新的跟踪器S-KeepTrack,它超过了所有20种评估方法。通过发布TSFMO,我们希望能够促进未来小而快速运动物体跟踪的研究和应用。TSFMO和评估结果以及S-KeepTrack可在\url{https://github.com/CodeOfGithub/S-KeepTrack}上获得。
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Tracking Small and Fast Moving Objects: A Benchmark
With more and more large-scale datasets available for training, visual tracking has made great progress in recent years. However, current research in the field mainly focuses on tracking generic objects. In this paper, we present TSFMO, a benchmark for \textbf{T}racking \textbf{S}mall and \textbf{F}ast \textbf{M}oving \textbf{O}bjects. This benchmark aims to encourage research in developing novel and accurate methods for this challenging task particularly. TSFMO consists of 250 sequences with about 50k frames in total. Each frame in these sequences is carefully and manually annotated with a bounding box. To the best of our knowledge, TSFMO is the first benchmark dedicated to tracking small and fast moving objects, especially connected to sports. To understand how existing methods perform and to provide comparison for future research on TSFMO, we extensively evaluate 20 state-of-the-art trackers on the benchmark. The evaluation results exhibit that more effort are required to improve tracking small and fast moving objects. Moreover, to encourage future research, we proposed a novel tracker S-KeepTrack which surpasses all 20 evaluated approaches. By releasing TSFMO, we expect to facilitate future researches and applications of tracking small and fast moving objects. The TSFMO and evaluation results as well as S-KeepTrack are available at \url{https://github.com/CodeOfGithub/S-KeepTrack}.
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