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Image-Based Multi-Target Tracking through Multi-Bernoulli Filtering with Interactive Likelihoods

机译:通过具有交互式可能性的多伯努利滤波进行基于图像的多目标跟踪

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We develop an interactive likelihood (ILH) for sequential Monte Carlo (SMC) methods for image-based multiple target tracking applications. The purpose of the ILH is to improve tracking accuracy by reducing the need for data association. In addition, we integrate a recently developed deep neural network for pedestrian detection along with the ILH with a multi-Bernoulli filter. We evaluate the performance of the multi-Bernoulli filter with the ILH and the pedestrian detector in a number of publicly available datasets (2003 PETS INMOVE, Australian Rules Football League (AFL) and TUD-Stadtmitte) using standard, well-known multi-target tracking metrics (optimal sub-pattern assignment (OSPA) and classification of events, activities and relationships for multi-object trackers (CLEAR MOT)). In all datasets, the ILH term increases the tracking accuracy of the multi-Bernoulli filter.
机译:我们为基于图像的多目标跟踪应用程序的顺序蒙特卡洛(SMC)方法开发了一种交互式可能性(ILH)。 ILH的目的是通过减少数据关联的需求来提高跟踪精度。此外,我们还集成了最新开发的用于行人检测的深度神经网络以及带有多伯努利滤波器的ILH。我们使用标准的,众所周知的多目标对象,在许多公开可用的数据集(2003年PETS INMOVE,澳大利亚规则足球联盟(AFL)和TUD-Stadtmitte)中,使用ILH和行人检测器评估多伯努利滤波器的性能跟踪指标(最佳子模式分配(OSPA)以及多对象跟踪器的事件,活动和关系分类(CLEAR MOT))。在所有数据集中,ILH项可提高多伯努利滤波器的跟踪精度。

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