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Explaining activities as consistent groups of events: A Bayesian framework using attribute multiset grammars

机译:将活动解释为一致的事件组:使用属性多集语法的贝叶斯框架

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摘要

We propose a method for disambiguating uncertain detections of events by seeking global explanations for activities. Given a noisy visual input, and exploiting our knowledge of the activity and its constraints, one can provide a consistent set of events explaining all the detections. The paper presents a complete framework that starts with a general way to formalise the set of global explanations for a given activity using attribute multiset grammars (AMG). An AMG combines the event hierarchy with the necessary features for recognition and algebraic constraints defining allowable combinations of events and features. Parsing a set of detections by such a grammar finds a consistent set of events that satisfies the activity's constraints. Each parse tree has a posterior probability in a Bayesian sense. To find the best parse tree, the grammar and a finite set of detections are mapped into a Bayesian network. The set of possible labellings of the Bayesian network corresponds to the set of all parse trees for a given set of detections. We compare greedy, multiple-hypotheses trees, reversible jump MCMC, and integer programming for finding the Maximum a Posteriori (MAP) solution over the space of explanations. The framework is tested for two applications; the activity in a bicycle rack and around a building entrance.
机译:我们提出了一种方法,通过寻求活动的全局解释来消除不确定的事件检测。给定嘈杂的视觉输入,并利用我们对活动及其限制的了解,可以提供一组一致的事件来解释所有检测结果。本文提出了一个完整的框架,该框架以使用属性多集语法(AMG)形式化给定活动的全局解释集的一般方式开始。 AMG将事件层次结构与必要的特征(用于识别和代数约束)相结合,以定义事件和特征的允许组合。通过这样的语法分析一组检测结果,可以找到满足活动约束的一致事件集。每个解析树在贝叶斯意义上都有一个后验概率。为了找到最佳的解析树,将语法和检测的有限集映射到贝叶斯网络中。贝叶斯网络的可能标记的集合对应于给定检测集合的所有解析树的集合。我们比较贪婪,多假设树,可逆跳转MCMC和整数编程,以在解释的空间内找到最大后验(MAP)解。该框架已针对两个应用程序进行了测试。在自行车架上和建筑物入口附近的活动。

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