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Online, Real-Time Tracking Using a Category-to-individual Detector

机译:使用类别到单个检测器的在线实时跟踪

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A method for online, real-time tracking of objects is presented. Tracking is treated as a repeated detection problem where potential target objects axe identified with a pre-trained category detector and object identity across frames is established by individual-specific detectors. The individual detectors are (re-)trained online from a single positive example whenever there is a coincident category detection. This ensures that the tracker is robust to drift. Real-time operation is possible since an individual-object detector is obtained through elementary manipulations of the thresholds of the category detector and therefore only minimal additional computations are required. Our tracking algorithm is benchmarked against nine state-of-the-art trackers on two large, publicly available and challenging video datasets. We find that our algorithm is 10% more accurate and neaxly as fast as the fastest of the competing algorithms, and it is as accurate but 20 times faster than the most accurate of the competing algorithms.
机译:提出了一种用于对象的在线,实时跟踪的方法。跟踪被视为重复检测问题,其中通过预先训练的类别检测器识别出的潜在目标对象斧头,并通过各个特定的检测器建立了跨帧的对象标识。只要存在一致的类别检测,就可以从单个阳性示例在线(重新)训练各个检测器。这样可以确保跟踪器具有强大的漂移能力。实时操作是可能的,因为通过对类别检测器的阈值进行基本操作即可获得单个对象检测器,因此仅需要最少的附加计算。我们的跟踪算法以两个大型,公开可用且具有挑战性的视频数据集上的九个最新跟踪器为基准。我们发现我们的算法比最快速的竞争算法提高10%的速度,并且其速度与最快速的竞争算法一样快,但比最精确的竞争算法快20倍。

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