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Tracking Objects Across Cameras by Incrementally Learning Inter-camera Colour Calibration and Patterns of Activity

机译:通过逐步学习相机间颜色校准和活动模式,跟踪相机跨相机的对象

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This paper presents a scalable solution to the problem of tracking objects across spatially separated, uncalibrated, non-overlapping cameras. Unlike other approaches this technique uses an incremental learning method, to model both the colour variations and posterior probability distributions of spatio-temporal links between cameras. These operate in parallel and are then used with an appearance model of the object to track across spatially separated cameras. The approach requires no pre-calibration or batch preprocessing, is completely unsupervised, and becomes more accurate over time as evidence is accumulated.
机译:本文提出了一种可扩展的解决方案,对跨空间分离,未校准的非重叠相机跟踪对象的问题。与其他方法不同,该技术使用增量学习方法,以模拟相机之间的时空链路的颜色变化和后验概率分布。这些并联操作,然后与物体的外观模型一起使用,以跨空间分离的相机轨道。该方法不需要预校准或批量预处理,完全无监督,随着证据累积而变得更加准确。

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