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Target Identity-aware Network Flow for online multiple target tracking

机译:目标身份感知网络流量用于在线多目标跟踪

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In this paper we show that multiple object tracking (MOT) can be formulated in a framework, where the detection and data-association are performed simultaneously. Our method allows us to overcome the confinements of data association based MOT approaches; where the performance is dependent on the object detection results provided at input level. At the core of our method lies structured learning which learns a model for each target and infers the best location of all targets simultaneously in a video clip. The inference of our structured learning is done through a new Target Identity-aware Network Flow (TINF), where each node in the network encodes the probability of each target identity belonging to that node. The proposed Lagrangian relaxation optimization finds the high quality solution to the network. During optimization a soft spatial constraint is enforced between the nodes of the graph which helps reducing the ambiguity caused by nearby targets with similar appearance in crowded scenarios. We show that automatically detecting and tracking targets in a single framework can help resolve the ambiguities due to frequent occlusion and heavy articulation of targets. Our experiments involve challenging yet distinct datasets and show that our method can achieve results better than the state-of-art.
机译:在本文中,我们示出了多个对象跟踪(MOT)可以在框架中配制,其中同时执行检测和数据关联。我们的方法使我们能够克服基于数据关联的MOT方法的约束;在表现依赖于输入级别提供的对象检测结果的位置。在我们的方法的核心,谎言结构化学习,它为每个目标学习模型,并在视频剪辑中同时inders同时发生所有目标的最佳位置。我们结构化学习的推断是通过新的目标身份感知网络流(TINF)完成的,其中网络中的每个节点对属于该节点的每个目标标识的概率进行编码。提出的拉格朗日放松优化找到了网络的高质量解决方案。在优化期间,在图的节点之间强制强制执行软空间约束,这有助于减少附近目标引起的模糊性,在拥挤的情况下具有类似的外观。我们表明,由于频繁的闭塞和沉重的目标,自动检测和跟踪目标可以帮助解决歧义。我们的实验涉及具有挑战性但不同的数据集,并表明我们的方法可以比最先进的方式实现结果。

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