For a long time, the most common paradigm in Multi-Object Tracking was tracking-by-detection (TbD), where objects are first detected and then associated over video frames. For association, most models resource to motion and appearance cues. While still relying on these cues, recent approaches based on, e.g., attention have shown an ever-increasing need for training data and overall complex frameworks. We claim that 1) strong cues can be obtained from little amounts of training data if some key design choices are applied, 2) given these strong cues, standard Hungarian matching-based association is enough to obtain impressive results. Our main insight is to identify key components that allow a standard reidentification network to excel at appearance-based tracking. We extensively analyze its failure cases and show that a combination of our appearance features with a simple motion model leads to strong tracking results. Our model achieves state-of-the-art performance on MOT17 and MOT20 datasets outperforming previous state-of-the-art trackers by up to 5.4pp in IDF1 and 4.4pp in HOTA. We will release the code and models after the paper's acceptance.
翻译:长期以来,多物体跟踪的最常见范例是跟踪逐个检测(TbD),首先检测对象,然后通过视频框架进行关联。对于关联,大多数模型资源都用于运动和外观提示。虽然仍然依靠这些提示,但最近基于例如,关注的最近方法显示,对培训数据和总体复杂框架的需求不断增加。我们声称,1 如果应用一些关键的设计选择,可以从少量的培训数据中获得强有力的提示。2 鉴于这些强有力的提示,标准的匈牙利匹配协会足以取得令人印象深刻的结果。我们的主要见解是确定关键组成部分,使标准重新定位网络能够出色地进行外观跟踪。我们广泛分析其失败案例,并表明我们外观特征与简单动作模型相结合的结果将带来强有力的跟踪结果。我们的模型在MOT17和MOT20数据集上取得最新业绩,在以色列国防军1和HOTA中达到5.4pp的成绩。我们将在文件被接受后发布代码和模型。