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Layered Graphical Models for Tracking Partially Occluded Objects

机译:用于跟踪部分遮挡的对象的分层图形模型

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摘要

We propose a representation for scenes containing relocatable objects that can cause partial occlusions of people in a camera's field of view. In many practical applications, relocatable objects tend to appear often; therefore, models for them can be learned offline and stored in a database. We formulate an occluder-centric representation, called a graphical model layer, where a person's motion in the ground plane is defined as a first-order Markov process on activity zones, while image evidence is aggregated in 2D observation regions that are depth-ordered with respect to the occlusion mask of the relocatable object. We represent real-world scenes as a composition of depth-ordered, interacting graphical model layers, and account for image evidence in a way that handles mutual overlap of the observation regions and their occlusions by the relocatable objects. These layers interact: Proximate ground-plane zones of different model instances are linked to allow a person to move between the layers, and image evidence is shared between the observation regions of these models. We demonstrate our formulation in tracking pedestrians in the vicinity of parked vehicles. Our results compare favorably with a sprite-learning algorithm, with a pedestrian tracker based on deformable contours, and with pedestrian detectors.
机译:我们提出了一种包含可重定位对象的场景的表示形式,该对象可能导致相机视野中的人的部分遮挡。在许多实际应用中,可重定位的对象经常出现。因此,可以离线学习它们的模型并将其存储在数据库中。我们制定了一个以阻塞器为中心的表示形式,称为图形模型层,其中,人在地平面上的运动被定义为活动区域上的一阶马尔可夫过程,而图像证据则被汇总在二维观察区域中,并以关于可重定位对象的遮挡蒙版。我们将现实世界中的场景表示为深度排序的交互图形模型层的组成,并以处理观察区域的相互重叠及其被可重定位对象的遮挡的方式说明图像证据。这些层相互作用:不同模型实例的近地平面区域链接在一起,以允许人员在各层之间移动,并且在这些模型的观察区域之间共享图像证据。我们展示了跟踪停放车辆附近行人的方式。我们的结果与Sprite学习算法,基于可变形轮廓的行人跟踪器以及行人检测器相比具有优势。

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