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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Multiple-Target Tracking by Spatiotemporal Monte Carlo Markov Chain Data Association
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Multiple-Target Tracking by Spatiotemporal Monte Carlo Markov Chain Data Association

机译:时空蒙特卡洛马尔可夫链数据协会的多目标跟踪

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We propose a framework for tracking multiple targets, where the input is a set of candidate regions in each frame, as obtained from a state-of-the-art background segmentation module, and the goal is to recover trajectories of targets over time. Due to occlusions by targets and static objects, as also by noisy segmentation and false alarms, one foreground region may not correspond to one target faithfully. Therefore, the one-to-one assumption used in most data association algorithms is not always satisfied. Our method overcomes the one-to-one assumption by formulating the visual tracking problem in terms of finding the best spatial and temporal association of observations, which maximizes the consistency of both motion and appearance of trajectories. To avoid enumerating all possible solutions, we take a Data-Driven Markov Chain Monte Carlo (DD-MCMC) approach to sample the solution space efficiently. The sampling is driven by an informed proposal scheme controlled by a joint probability model combining motion and appearance. Comparative experiments with quantitative evaluations are provided.
机译:我们提出了一个用于跟踪多个目标的框架,其中输入是每个帧中的一组候选区域,这是从最新的背景分割模块中获得的,目标是随着时间的推移恢复目标的轨迹。由于目标和静态对象的遮挡,以及嘈杂的分段和错误警报,一个前景区域可能无法忠实地对应一个目标。因此,并不总是满足大多数数据关联算法中使用的一对一假设。我们的方法通过在寻找最佳的时空观测关联方面制定视觉跟踪问题,从而克服了一对一的假设,从而最大程度地提高了运动和轨迹外观的一致性。为了避免列举所有可能的解决方案,我们采用了数据驱动的马尔可夫链蒙特卡洛(DD-MCMC)方法来有效地采样解决方案空间。采样由一个知情的提议方案驱动,该方案由结合了运动和外观的联合概率模型控制。提供了具有定量评估的对比实验。

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