Despite the recent advances in multiple object tracking (MOT), achieved by joint detection and tracking, dealing with long occlusions remains a challenge. This is due to the fact that such techniques tend to ignore the long-term motion information. In this paper, we introduce a probabilistic autoregressive motion model to score tracklet proposals by directly measuring their likelihood. This is achieved by training our model to learn the underlying distribution of natural tracklets. As such, our model allows us not only to assign new detections to existing tracklets, but also to inpaint a tracklet when an object has been lost for a long time, e.g., due to occlusion, by sampling tracklets so as to fill the gap caused by misdetections. Our experiments demonstrate the superiority of our approach at tracking objects in challenging sequences; it outperforms the state of the art in most standard MOT metrics on multiple MOT benchmark datasets, including MOT16, MOT17, and MOT20.
翻译:尽管通过联合探测和跟踪实现的多物体追踪(MOT)最近有所进展,但处理长期分离仍然是一个挑战,这是因为这种技术往往忽视长期运动信息。在本文中,我们引入了一种概率性自动递减运动模型,通过直接测量其可能性来评分跟踪建议。这是通过培训我们的模型来了解自然轨迹的基本分布而实现的。因此,我们的模型不仅允许为现有的跟踪跟踪器指派新的探测器,而且允许在物体丢失很长时间(例如,由于隔离)之后绘制一个跟踪器,例如,通过取样跟踪器来填补因误差造成的空白。我们的实验表明,我们的方法优于以具有挑战性的序列跟踪物体;它超越了包括MOT16、MOT17和MOT20在内的多部MOT基准数据集中最标准的MOT测量器的状态。