This paper presents a new large scale multi-person tracking dataset -- \texttt{PersonPath22}, which is over an order of magnitude larger than currently available high quality multi-object tracking datasets such as MOT17, HiEve, and MOT20 datasets. The lack of large scale training and test data for this task has limited the community's ability to understand the performance of their tracking systems on a wide range of scenarios and conditions such as variations in person density, actions being performed, weather, and time of day. \texttt{PersonPath22} dataset was specifically sourced to provide a wide variety of these conditions and our annotations include rich meta-data such that the performance of a tracker can be evaluated along these different dimensions. The lack of training data has also limited the ability to perform end-to-end training of tracking systems. As such, the highest performing tracking systems all rely on strong detectors trained on external image datasets. We hope that the release of this dataset will enable new lines of research that take advantage of large scale video based training data.
翻译:本文介绍了一个新的大型多人跟踪数据集 -- -- \ texttt{PersonPath22},该数据集的规模超过了目前现有的高品质多对象跟踪数据集,如MOT17、HiEve和MOT20数据集。由于缺少大规模培训和测试数据,这项工作限制了社区了解其跟踪系统在广泛的情景和条件下的性能,如人密度变化、正在采取的行动、天气和日间时间。\textt{PersonPath22}数据集是专门用来提供多种多样的这些条件的。我们的注释包括丰富的元数据,因此跟踪器的性能可以按照这些不同层面进行评估。缺乏培训数据还限制了进行跟踪系统端到端培训的能力。因此,运行中最高的跟踪系统都依赖外部图像数据集培训的强力探测器。我们希望,该数据集的发布将使得新的研究系列得以利用大型视频培训数据。