In this paper, we propose and study Open-World Tracking (OWT). Open-world tracking goes beyond current multi-object tracking benchmarks and methods which focus on tracking object classes that belong to a predefined closed-set of frequently observed object classes. In OWT, we relax this assumption: we may encounter objects at inference time that were not labeled for training. The main contribution of this paper is the formalization of the OWT task, along with an evaluation protocol and metric (Open-World Tracking Accuracy, OWTA), which decomposes into two intuitive terms, one for measuring recall, and another for measuring track association accuracy. This allows us to perform a rigorous evaluation of several different baselines that follow design patterns proposed in the multi-object tracking community. Further we show that our Open-World Tracking Baseline, while performing well in the OWT setting, also achieves near state-of-the-art results on traditional closed-world benchmarks, without any adjustments or tuning. We believe that this paper is an initial step towards studying multi-object tracking in the open world, a task of crucial importance for future intelligent agents that will need to understand, react to, and learn from, an infinite variety of objects that can appear in an open world.
翻译:在本文中,我们提议并研究开放世界跟踪(OWT) 。 开放世界跟踪(OWT)超越了当前多目标跟踪基准和方法,这些基准和方法侧重于跟踪属于预先定义的封闭式经常观测对象类别的物体类别。 在OWT, 我们放松这一假设: 我们可能会在推断时间遇到没有标记的培训对象。 本文的主要贡献是将OWT的任务正式化, 以及一项评价协议和指标( OF- World跟踪准确性, OWTA), 后者分解成两个直观术语, 一个用于测量回溯, 另一个用于测量轨联性准确性。 这使我们能够对几个不同的基线进行严格的评估, 这些基线遵循多目标跟踪社区提出的设计模式。 我们进一步表明,我们的开放世界跟踪基线虽然在OWT环境中表现良好,但是在传统的封闭世界基准上也取得了接近最先进的结果, 而没有任何调整或调整。 我们认为, 这份文件是研究在开放世界中多目标跟踪的初始步骤, 一个至关重要的任务, 对于未来的智能分子来说, 需要从了解世界的无限反应。