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Global Data Association for Multi-Object Tracking Using Network Flows

机译:使用网络流的多对象跟踪的全局数据关联

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We propose a network flow based optimization method for data association needed for multiple object tracking. The maximum-a-posteriori (MAP) data association problem is mapped into a cost-flow network with a non-overlap constraint on trajectories. The optimal data association is found by a min-cost flow algorithm in the network. The network is augmented to include an Explicit Occlusion Model (EOM) to track with long-term inter-object occlusions. A solution to the EOM-based network is found by an iterative approach built upon the original algorithm. Initialization and termination of trajectories and potential false observations are modeled by the formulation intrinsically. The method is efficient and does not require hypotheses pruning. Performance is compared with previous results on two public pedestrian datasets to show its improvement.
机译:我们提出了一种基于网络流动的优化方法,用于多个对象跟踪所需的数据关联。最大-a-boutheriori(map)数据关联问题被映射到成本流量网络,在轨迹上具有非重叠约束。通过网络中的最小成本流算法找到最佳数据关联。该网络被扩充为包括显式遮挡模型(EOM)以跟踪长期对象闭合。通过基于原始算法的迭代方法找到基于EOM的网络的解决方案。轨迹的初始化和终止和潜在的假观察由制剂本质上建模。该方法是有效的,不需要假设修剪。将性能与前一个公共行人数据集上的先前结果进行了比较,以显示其改进。

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