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Online multiperson tracking with occlusion reasoning and unsupervised track motion model

机译:用遮挡推理和无监督轨道运动模型跟踪在线多牌追踪

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We address the problem of multi-target tracking in realistic crowded conditions by introducing a novel dual-stage online tracking algorithm. The problem of data-association between tracks and detections, based on appearance, is often complicated by partial occlusion. In the first stage, we address the issue of occlusion with a novel method of robust data-association, that can be used to compute the appearance similarity between tracks and detections without the need for explicit knowledge of the occluded regions. In the second stage, broken tracks are linked based on motion and appearance, using an online-learned linking model. The online-learned motion-model for track linking uses the confident tracks from the first stage tracker as training examples. The new approach has been tested on the town centre dataset and has performance comparable with the present state-of-the-art.
机译:通过引入一种新型双级在线跟踪算法,我们解决了现实拥挤条件中的多目标跟踪问题。 基于外观的轨道和检测之间的数据关联问题通常是通过部分闭塞复杂的。 在第一阶段,我们以一种新的强大数据关联方法解决了遮挡问题,该方法可用于计算轨道和检测之间的外观相似性,而无需明确地了解遮挡区域。 在第二阶段,使用在线学习链接模型,基于运动和外观链接断路器。 用于轨道链接的在线学习运动模型使用第一级跟踪器的自信曲目作为培训示例。 新方法已在市中心数据集上进行了测试,并且与现有最先进的性能相当。

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