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Tracker trees for unusual event detection

机译:跟踪器树,用于异常事件检测

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We present an approach for unusual event detection, based on a tree of trackers. At lower levels, the trackers are trained on broad classes of targets. At higher levels, they aim at more specific targets. For instance, at the root, a general blob tracker could operate which may track any object. The next level could already use information about human appearance to better track people. A further level could go after specific types of actions like walking, running, or sitting. Yet another level up, several walking trackers can be tuned to the gait of a particular person each. Thus, at each layer, one or more families of more specific trackers are available. As long as the target behaves according to expectations, a member of a higher up such family will be better tuned to the data than its parent tracker at a lower level. Typically, a better informed tracker performs more robustly. But in cases where unusual events occur and the normal assumptions about the world no longer hold, they loose their reliability. In such cases, a less informed tracker, not relying on what has now become false information, has a good chance of performing better. Such performance inversion signals an unusual event. Inversions between levels higher up represent deviations that are semantically more subtle than inversions lower down: for instance an unknown intruder entering a house rather than seeing a non-human target.
机译:我们提出了一种基于跟踪器树的异常事件检测方法。在较低级别,跟踪器接受了广泛的目标类别的培训。在更高级别上,它们针对更具体的目标。例如,从根本上讲,一般的Blob跟踪器可以运行,可以跟踪任何对象。下一级别可能已经使用有关人的外观的信息来更好地跟踪人。更进一步的水平可以遵循特定类型的动作,例如步行,跑步或坐下。再上一层,可以将多个步行跟踪器分别调整为适合特定人的步态。因此,在每一层,都可以使用一个或多个系列的特定跟踪器。只要目标的行为符合预期,与其上级的父级跟踪器相比,上级此类家庭的成员将更好地调整数据。通常,消息灵通的跟踪器的性能更强大。但是,如果发生不寻常的事件并且对世界的正常假设不再成立,它们就会失去可靠性。在这种情况下,信息不多的跟踪者可以不依赖现在变成虚假信息的情况,而有更好的表现机会。这种性能倒退预示着不寻常的事件。较高级别之间的反转表示语义上的偏差比较低级别的反转更细微:例如,一个未知的入侵者进入房屋而不是看到非人类目标。

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