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Robust online multiple object tracking based on the confidence-based relative motion network and correlation filter

机译:基于基于置信度的相对运动网络和相关滤波器的鲁棒在线多目标跟踪

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When tracking multiple objects in an image sequence, various difficulties such as occlusion, mis-detection, false detection, and abrupt camera motion often occur together. Nevertheless, previous methods on multi-object tracking generally focus on only one or two of them. For that reason, the previous methods could not handle various problematic situations, where multiple difficulties occur simultaneously. To overcome this limitation, we propose a unified framework that can handle such difficulties concurrently, where we effectively combine the confidence-based two-step data association and relative motion network with correlation filtering. We show that the proposed unified framework yields noticeable performance enhancement under various difficulties.
机译:当跟踪一个图像序列中的多个对象时,通常会同时发生各种困难,例如遮挡,误检测,误检测和突然的相机运动。尽管如此,先前的多对象跟踪方法通常只关注其中的一两个方法。因此,先前的方法无法处理多种问题同时发生的多个困难情况。为了克服此限制,我们提出了一个可以同时处理此类困难的统一框架,在该框架中,我们将基于置信度的两步数据关联和相对运动网络与相关过滤有效地结合在一起。我们表明,提出的统一框架在各种困难下都能产生显着的性能提升。

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