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Multi-object Tracking Cascade with Multi-Step Data Association and Occlusion Handling

机译:具有多步数据关联和遮挡处理的多对象跟踪级联

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Multi-object tracking is a fundamental computer vision task with a wide variety of real-life applications ranging from surveillance and monitoring to biomedical video analysis. Multi-object tracking is a challenging task due to complications caused by object appearance changes, complex object dynamics, clutter in the environment, and partial or full occlusions. In this paper, we propose a time-efficient detection-based multi-object tracking system using a three-step cascaded data association scheme that combines a fast spatial distance only short-term data association, a robust tracklet linking step using discriminative object appearance models, and an explicit occlusion handling unit relying not only on tracked objects' motion patterns but also on environmental constraints such as presence of potential occlud-ers in the scene. Our experiments on UA-DETRAC multi-object tracking benchmark dataset consisting of challenging real-world traffic videos show promising results against state-of-the-art trackers.
机译:多目标跟踪是一项基本计算机视觉任务,具有各种现实寿命应用,从监测和监测到生物医学视频分析。多目标跟踪是由于对象外观变化,复杂的对象动态,环境中的杂乱和部分或完全遮挡引起的复杂性,并且是一个具有挑战性的任务。在本文中,我们提出了一种使用三步级联数据关联方案的基于时间有效的检测的多对象跟踪系统,该数据关联方案仅使用鉴别的对象外观模型结合快速空间距离短期数据关联,这是一种鲁棒型轨道链接步骤,并且不仅依赖于跟踪物体的运动模式而且还依赖于诸如场景中存在潜在occlud-ers的环境限制的显式遮挡处理单元。我们对UA-DETRAC组成的挑战现实世界的交通视频多目标跟踪基准数据集实验证明有前途的反对国家的最先进的跟踪结果。

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