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首页> 外文期刊>IEEE Transactions on Image Processing >Greedy Batch-Based Minimum-Cost Flows for Tracking Multiple Objects
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Greedy Batch-Based Minimum-Cost Flows for Tracking Multiple Objects

机译:基于贪婪批次的最小成本流,用于跟踪多个对象

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摘要

Minimum-cost flow algorithms have recently achieved state-of-the-art results in multi-object tracking. However, they rely on the whole image sequence as input. When deployed in real-time applications or in distributed settings, these algorithms first operate on short batches of frames and then stitch the results into full trajectories. This decoupled strategy is prone to errors because the batch-based tracking errors may propagate to the final trajectories and cannot be corrected by other batches. In this paper, we propose a greedy batch-based minimum-cost flow approach for tracking multiple objects. Unlike existing approaches that conduct batch-based tracking and stitching sequentially, we optimize consecutive batches jointly so that the tracking results on one batch may benefit the results on the other. Specifically, we apply a generalized minimum-cost flows (MCF) algorithm on each batch and generate a set of conflicting trajectories. These trajectories comprise the ones with high probabilities, but also those with low probabilities potentially missed by detectors and trackers. We then apply the generalized MCF again to obtain the optimal matching between trajectories from consecutive batches. Our proposed approach is simple, effective, and does not require training. We demonstrate the power of our approach on data sets of different scenarios.
机译:成本最低的流算法最近在多对象跟踪中取得了最先进的结果。但是,它们依赖整个图像序列作为输入。当将这些算法部署在实时应用程序或分布式设置中时,它们首先会在短批帧上运行,然后将结果拼接成完整的轨迹。这种解耦策略容易出错,因为基于批次的跟踪错误可能会传播到最终轨迹,并且无法被其他批次纠正。在本文中,我们提出了一种基于贪婪批次的最小成本流方法来跟踪多个对象。与现有的按顺序进行基于批次的跟踪和缝合的方法不同,我们共同优化连续的批次,以使一个批次的跟踪结果可以使另一批次的结果受益。具体来说,我们对每批应用通用的最小成本流(MCF)算法,并生成一组相互冲突的轨迹。这些轨迹既包括概率高的轨迹,也包括概率低的探测器和跟踪器可能遗漏的轨迹。然后,我们再次应用广义MCF,以获得连续批次中的轨迹之间的最佳匹配。我们提出的方法简单,有效,并且不需要培训。我们展示了我们的方法对不同场景的数据集的强大功能。

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