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Tracker-Level Fusion for Robust Bayesian Visual Tracking

机译:用于鲁棒贝叶斯视觉跟踪的跟踪器级融合

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摘要

We propose a tracker-level fusion framework for robust visual tracking. The framework combines trackers addressing different tracking challenges to improve the overall performance. A novelty of the proposed framework is the inclusion of an online performance measure to identify the track quality level of each tracker so as to guide the fusion. The fusion is then based on appropriately mixing the prior state of the trackers. Moreover, the track-quality level is used to update the target appearance model. We demonstrate the framework with two Bayesian trackers on video sequences with various challenges and show its robustness compared with the independent use of the two individual trackers, and also compared with state-of-the-art trackers that use tracker-level fusion.
机译:我们提出了一个跟踪器级别的融合框架,用于强大的视觉跟踪。该框架结合了跟踪器,以应对不同的跟踪挑战,以提高整体性能。所提出的框架的新颖之处在于包括了一种在线性能指标,以识别每个跟踪器的跟踪质量水平,从而指导融合。然后,基于适当地混合跟踪器的先前状态进行融合。此外,轨道质量级别用于更新目标外观模型。我们用两个贝叶斯跟踪器在各种挑战的视频序列上演示了该框架,并与两个单独的跟踪器的独立使用以及使用跟踪器级融合的最新跟踪器相比,显示了其鲁棒性。

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