Recent developments in monocular multi-object tracking have been very successful in tracking visible objects and bridging short occlusion gaps, mainly relying on data-driven appearance models. While we have significantly advanced short-term tracking performance, bridging longer occlusion gaps remains elusive: state-of-the-art object trackers only bridge less than 10% of occlusions longer than three seconds. We suggest that the missing key is reasoning about future trajectories over a longer time horizon. Intuitively, the longer the occlusion gap, the larger the search space for possible associations. In this paper, we show that even a small yet diverse set of trajectory predictions for moving agents will significantly reduce this search space and thus improve long-term tracking robustness. Our experiments suggest that the crucial components of our approach are reasoning in a bird's-eye view space and generating a small yet diverse set of forecasts while accounting for their localization uncertainty. This way, we can advance state-of-the-art trackers on the MOTChallenge dataset and significantly improve their long-term tracking performance. This paper's source code and experimental data are available at https://github.com/dendorferpatrick/QuoVadis.
翻译:单眼多球跟踪的近期发展非常成功地追踪可见物体,弥补短期封闭差距,主要依靠数据驱动的外观模型。虽然我们取得了显著的短期跟踪性能,但更长期的封闭性差距仍然难以弥合:最先进的物体跟踪器只连接超过三秒钟的10%以下的隔热物。我们建议缺失的关键是在较长的时空范围内对未来轨迹进行推理。直觉来看,隔热差距越长,搜索可能的联系空间越大。在本文中,我们显示,即使是一套小型但多样的移动剂轨迹预测也会大大缩小这一搜索空间,从而改善长期跟踪的稳健性。我们的实验表明,我们方法的关键组成部分是在鸟眼视野空间进行推理,并产生一小而多样的预测,同时计算其本地化不确定性。这样,我们可以在MOTChallge数据集上推进州级的追踪器,并大大改进它们的长期跟踪性能。本文的源代码和实验性数据可在http://Vgirdbral/Qqivarbrock。