Multiple Object Tracking (MOT) has rapidly progressed in recent years. Existing works tend to design a single tracking algorithm to perform both detection and association. Though ensemble learning has been exploited in many tasks, i.e, classification and object detection, it hasn't been studied in the MOT task, which is mainly caused by its complexity and evaluation metrics. In this paper, we propose a simple but effective ensemble method for MOT, called EnsembleMOT, which merges multiple tracking results from various trackers with spatio-temporal constraints. Meanwhile, several post-processing procedures are applied to filter out abnormal results. Our method is model-independent and doesn't need the learning procedure. What's more, it can easily work in conjunction with other algorithms, e.g., tracklets interpolation. Experiments on the MOT17 dataset demonstrate the effectiveness of the proposed method. Codes are available at https://github.com/dyhBUPT/EnsembleMOT.
翻译:近些年来,多物体跟踪(MOT)取得了迅速的进展。现有的工作倾向于设计一种单一的跟踪算法来进行探测和联系。虽然在很多任务(即分类和物体探测)中都利用了混合学习,但在MOT的任务中却没有研究过,这主要是其复杂性和评估指标造成的。在本文中,我们为MOT提出了一个简单而有效的混合方法,称为EnsembleMOT,它把各种追踪器的多重跟踪结果与时空限制结合起来。与此同时,若干后处理程序被用于过滤异常结果。我们的方法是依赖模型的,不需要学习程序。此外,它可以很容易地与其他算法(例如轨道内插图)一起工作。关于MOT17数据集的实验显示了拟议方法的有效性。代码见https://github.com/dyhBUPT/EnsembleMOT。