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Robust Local Effective Matching Model for Multi-target Tracking

机译:用于多目标跟踪的鲁棒局部有效匹配模型

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Occlusion is one of the main challenges in multi-target tracking, which causes fragments in tracking. In order to handle with fragments, various motion models were proposed. However, motion model has limited effect on dealing with long-term fragments, because the predictability of target motion declines with increase in fragment length. Thus we propose a robust local effective matching model for partial detections to reduce fragment length first. The proposed model is integrated into a network flow based hierarchical framework to solve long-term fragments step-by-step. Initial tracklets are generated for later analysis in the first level. The robust local effective matching model is used in the second level to reduce fragment length. A motion model is utilized in the third level to solve fragments between tracklets. The benchmark results on 2D MOT 2015 dataset were compared with several state-of-the-art trackers and our method got competitive results with those trackers.
机译:遮挡是多目标跟踪中的主要挑战之一,它会导致跟踪过程中出现碎片。为了处理碎片,提出了各种运动模型。但是,运动模型对长期碎片的处理效果有限,因为目标运动的可预测性会随着碎片长度的增加而下降。因此,我们为部分检测提出了一个鲁棒的局部有效匹配模型,以首先减少片段的长度。所提出的模型被集成到基于网络流的分层框架中,以逐步解决长期碎片。生成初始跟踪集,以供以后在第一级进行分析。在第二级中使用鲁棒的局部有效匹配模型来减少片段长度。在第三级中使用运动模型来解决小轨迹之间的片段。将2D MOT 2015数据集上的基准测试结果与几个最新的跟踪器进行了比较,我们的方法在这些跟踪器上获得了竞争性结果。

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