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首页> 外文期刊>IEE proceedings, Part K. Vision, image and signal processing >Towards automated wide area visual surveillance: tracking objects between spatially-separated, uncalibrated views
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Towards automated wide area visual surveillance: tracking objects between spatially-separated, uncalibrated views

机译:走向自动化的广域视觉监视:在空间分隔的未经校准的视图之间跟踪对象

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摘要

This paper presents a solution to the problem of tracking intermittent targets that can overcome long-term occlusions, as well as movement between camera views. Unlike other approaches, our system does not require topological knowledge of the site or labelled training patterns during the learning period. The approach uses the statistical consistency of data obtained automatically over an extended period of time rather than explicit geometric calibration to automatically learn the salient reappearance periods for objects. This allows us to predict where objects may reappear, and within how long. We demonstrate how these salient reappearance periods can be used with a model of physical appearance to track objects between spatially separate regions in single and separated views.
机译:本文提出了一种解决间歇目标跟踪问题的解决方案,该目标可以克服长期遮挡以及摄像机视图之间的运动。与其他方法不同,我们的系统在学习期间不需要站点的拓扑知识或标记的训练模式。该方法使用在延长的时间段内自动获取的数据的统计一致性,而不是使用明确的几何校准来自动学习对象的显着重现周期。这使我们能够预测对象可能在何处出现以及持续多长时间。我们演示了如何将这些明显的重现期与物理外观模型一起使用,以在单个视图和分离视图中的空间分离区域之间跟踪对象。

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