Efficient occlusion handling for multiple agent tracking by reasoning with surveillance event primitives

P. Guha, A. Mukerjee, K. Venkatesh
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引用次数: 31

Abstract

Tracking multiple agents in a monocular visual surveillance system is often challenged by the phenomenon of occlusions. Agents entering the field of view can undergo two different forms of occlusions, either caused by crowding or due to obstructions by background objects at finite distances from the camera. The agents are primarily detected as foreground blobs and are characterized by their motion history and weighted color histograms. These features are further used for localizing them in subsequent frames through motion prediction assisted mean shift tracking. A number of Boolean predicates are evaluated based on the fractional overlaps between the localized regions and foreground blobs. We construct predicates describing a comprehensive set of possible surveillance event primitives including entry/exit, partial or complete occlusions by background objects, crowding, splitting of agents and algorithm failures resulting from track loss. Instantiation of these event primitives followed by selective feature updates enables us to develop an effective scheme for tracking multiple agents in relatively unconstrained environments.
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基于监视事件原语推理的多智能体跟踪的高效遮挡处理
在单目视觉监控系统中,跟踪多个智能体经常受到遮挡现象的挑战。进入视场的主体可以经历两种不同形式的遮挡,一种是由于拥挤造成的,另一种是由于距离相机有限距离的背景物体的阻碍造成的。这些代理主要被检测为前景斑点,并通过它们的运动历史和加权颜色直方图来表征。这些特征通过运动预测辅助平均移位跟踪进一步用于在后续帧中定位它们。基于局部区域和前景blob之间的分数重叠来评估许多布尔谓词。我们构建了描述一组全面的可能的监视事件原语的谓词,包括进入/退出、背景物体的部分或完全遮挡、拥挤、代理分裂和由轨迹丢失导致的算法失败。这些事件原语的实例化以及选择性的特征更新使我们能够开发一种有效的方案,用于在相对不受约束的环境中跟踪多个代理。
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