论文标题

Motchallenge:单机多个目标跟踪的基准

MOTChallenge: A Benchmark for Single-Camera Multiple Target Tracking

论文作者

Dendorfer, Patrick, Ošep, Aljoša, Milan, Anton, Schindler, Konrad, Cremers, Daniel, Reid, Ian, Roth, Stefan, Leal-Taixé, Laura

论文摘要

标准化的基准测试对于推动计算机视觉算法的性能至关重要,尤其是自深度学习的出现以来。尽管排行榜不应过分享有,但它们通常提供最客观的绩效衡量标准,因此是研究的重要指南。我们提出Motchallenge,这是一种用于2014年底启动的单机多对象跟踪(MOT)的基准,以收集现有和新数据,并为多个对象跟踪方法进行标准化评估创建框架。基准的重点是多个人跟踪,因为行人是迄今为止跟踪社区中研究最多的对象,其应用程序从机器人导航到自动驾驶汽车不等。本文收集了基准的前三个版本:(i)MOT15,加上过去几年提交的许多最先进的结果,(ii)MOT16包含新的具有挑战性的视频,以及(iii)MOT17,它们扩展了MOT16序列,以更精确的Labels扩展并评估在三个不同对象检测器上跟踪性能。第二和第三版本不仅可以显着增加标记的框数,而且还为行人旁边的多个对象类提供了标签,以及每个感兴趣的对象的可见度。我们最终提供了最先进的跟踪器和广泛错误分析的分类。这将帮助新移民了解MOT社区的相关工作和研究趋势,并希望能阐明潜在的未来研究方向。

Standardized benchmarks have been crucial in pushing the performance of computer vision algorithms, especially since the advent of deep learning. Although leaderboards should not be over-claimed, they often provide the most objective measure of performance and are therefore important guides for research. We present MOTChallenge, a benchmark for single-camera Multiple Object Tracking (MOT) launched in late 2014, to collect existing and new data, and create a framework for the standardized evaluation of multiple object tracking methods. The benchmark is focused on multiple people tracking, since pedestrians are by far the most studied object in the tracking community, with applications ranging from robot navigation to self-driving cars. This paper collects the first three releases of the benchmark: (i) MOT15, along with numerous state-of-the-art results that were submitted in the last years, (ii) MOT16, which contains new challenging videos, and (iii) MOT17, that extends MOT16 sequences with more precise labels and evaluates tracking performance on three different object detectors. The second and third release not only offers a significant increase in the number of labeled boxes but also provide labels for multiple object classes beside pedestrians, as well as the level of visibility for every single object of interest. We finally provide a categorization of state-of-the-art trackers and a broad error analysis. This will help newcomers understand the related work and research trends in the MOT community, and hopefully shed some light on potential future research directions.

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