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Exploiting long-term observations for track creation and deletion in online multi-face tracking

机译:利用在线多面跟踪中的轨道创建和删除的长期观测

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In many visual multi-object tracking applications, the question when to add or remove a target is not trivial due to, for example, erroneous outputs of object detectors or observation models that cannot describe the full variability of the objects to track. In this paper, we present a real-time, online multi-face tracking algorithm that effectively deals with missing or uncertain detections in a principled way. The tracking is formulated in a multi-object state-space Bayesian filtering framework solved with Markov Chain Monte Carlo. Within this framework, an explicit probabilistic filtering step relying on head detections, likelihood models, and long term observations as well as object track characteristics has been designed to take the decision on when to add or remove a target from the tracker. The proposed method applied on three challenging datasets of more than 9 hours shows a significant performance increase compared to a traditional approach relying on head detection and likelihood models only.
机译:在许多可视多目标跟踪应用程序中,由于对象检测器的错误输出或无法描述要跟踪的对象的全部可变性的对象检测器或观察模型的错误输出,该问题何时添加或删除目标的问题并不琐碎。在本文中,我们提出了一个实时在线多面跟踪算法,有效地以原则方式涉及缺失或不确定的检测。跟踪在用马尔可夫链蒙特卡罗解决的多对象状态空间贝叶斯过滤框架中制定。在该框架内,依赖于头部检测,似然模型和长期观测以及对象轨道特性的显式概率滤波步骤已经设计成在何时从跟踪器添加或删除目标时采取决定。应用于超过9小时的三个具有挑战性的数据集的所提出的方法显示出与仅依赖于头部检测和似然模型的传统方法相比显着的性能。

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