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Semantic Event Representation And Recognition Using Syntactic Attribute Graph Grammar

机译:句法属性图语法的语义事件表示与识别

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摘要

The representation and recognition of complex semantic events (e.g. illegal parking, stealing objects) is a challenging task for high-level understanding of video sequence. To solve this problem, an attribute graph grammar for events modeling is studied in this paper. This grammar models the variability of semantic events by a set of meaningful "event components" with the spatio-temporal constraints. The event components are defined manually according to their semantic meaning, and further decomposed into atomic event primitives. These event primitives are learned on a object-trajectory table that describes mobile object attributes (location, velocity, and visibility) in a video sequence. A dictionary of temporal and spatial relations are defined to constrain the event primitives. With this representation, one observed event can be parsed into an "event parse graph", and all possible variability of one event can be modeled into an "event And-Or graph", in a syntactic way. The probability model of an "event And-Or graph" can be learned on a set of annotated event instances, and given a learned event And-Or graph, a Gibbs sampling scheme is utilized for inference on a testing video. In the experiments, we test events recognition performance of the proposed on both real indoor and outdoor videos and show quantitative recognition rate on the public LH1 dataset.
机译:复杂语义事件(例如非法停车,偷窃物体)的表示和识别对于高级别了解视频序列而言是一项艰巨的任务。为了解决这个问题,本文研究了一种用于事件建模的属性图语法。该语法通过一组具有时空约束的有意义的“事件组件”对语义事件的可变性进行建模。事件组件根据其语义进行手动定义,然后进一步分解为原子事件原语。这些事件原语是在对象轨迹表上学习的,该表描述了视频序列中的移动对象属性(位置,速度和可见性)。定义了时空关系字典来约束事件原语。通过这种表示,可以将一个观察到的事件解析为“事件解析图”,并且可以以句法的方式将一个事件的所有可能的变化建模为“事件与或图”。可以在一组带注释的事件实例上学习“事件“或”图的概率模型,并在获得学习到的事件“或”图的情况下,使用吉布斯采样方案推断测试视频。在实验中,我们在真实的室内和室外视频上测试了该提议的事件识别性能,并在公共LH1数据集上显示了定量识别率。

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