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A Multiple Hypothesis Tracking Method with Fragmentation Handling

机译:具有碎片处理的多假设跟踪方法

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In this paper, we present a new multiple hypotheses tracking (MHT) approach. Our tracking method is suitable for online applications, because it labels objects at every frame and estimates the best computed trajectories up to the current frame. In this work we address the problems of object merging and splitting (occlusions) and object fragmentations. Object fragmentation resulting from imperfect background subtraction can easily be confused with splitting objects in a scene, especially in close range surveillance applications. This subject is not addressed in most MHT methods. In this work, we propose a framework for MHT which distinguishes fragmentation and splitting using their spatial and temporal characteristics and by generating hypotheses only for splitting cases using observation in later frames. This approach results in a more accurate data association and a reduced size of the hypothesis graph. Our tracking method is evaluated with various indoor videos.
机译:在本文中,我们提出了一种新的多假设跟踪(MHT)方法。我们的跟踪方法适用于在线应用程序,因为它在每个帧上标记对象,并估计最佳计算轨迹到当前帧。在这项工作中,我们解决了对象合并和分裂(闭塞)和对象碎片问题的问题。由不完美的背景减法产生的对象碎片可以很容易地与场景中的分裂对象很容易混淆,尤其是近距离监视应用。此主题未以大多数MHT方法解决。在这项工作中,我们向MHT提出了一种框架,其利用它们的空间和时间特征来区分碎片化和分裂,并通过仅在后面的帧中使用观察来产生假设。该方法导致更准确的数据关联和缩小尺寸的假设图。我们的跟踪方法由各种室内视频进行评估。

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