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Modeling Temporal Interactions with Interval Temporal Bayesian Networks for Complex Activity Recognition

机译:使用时间间隔贝叶斯网络建模时间交互以进行复杂的活动识别

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摘要

Complex activities typically consist of multiple primitive events happening in parallel or sequentially over a period of time. Understanding such activities requires recognizing not only each individual event but, more importantly, capturing their spatiotemporal dependencies over different time intervals. Most of the current graphical model-based approaches have several limitations. First, time--sliced graphical models such as hidden Markov models (HMMs) and dynamic Bayesian networks are typically based on points of time and they hence can only capture three temporal relations: precedes, follows, and equals. Second, HMMs are probabilistic finite-state machines that grow exponentially as the number of parallel events increases. Third, other approaches such as syntactic and description-based methods, while rich in modeling temporal relationships, do not have the expressive power to capture uncertainties. To address these issues, we introduce the interval temporal Bayesian network (ITBN), a novel graphical model that combines the Bayesian Network with the interval algebra to explicitly model the temporal dependencies over time intervals. Advanced machine learning methods are introduced to learn the ITBN model structure and parameters. Experimental results show that by reasoning with spatiotemporal dependencies, the proposed model leads to a significantly improved performance when modeling and recognizing complex activities involving both parallel and sequential events.
机译:复杂活动通常由多个基本事件组成,这些事件在一段时间内并行或顺序发生。了解此类活动不仅需要识别每个单独的事件,而且更重要的是,要捕获它们在不同时间间隔上的时空依赖性。当前大多数基于图形模型的方法都有一些局限性。首先,时间分割的图形模型(例如隐马尔可夫模型(HMM)和动态贝叶斯网络)通常基于时间点,因此它们只能捕获三个时间关系:先行,跟随和相等。其次,HMM是概率有限状态机,随着并行事件数量的增加而呈指数增长。第三,其他方法(例如,基于句法和基于描述的方法)虽然对时间关系进行了建模,但并不具有捕获不确定性的表达能力。为了解决这些问题,我们引入了间隔时间贝叶斯网络(ITBN),这是一种新颖的图形模型,将贝叶斯网络与间隔代数相结合,以明确地建模时间间隔上的时间依赖性。引入了高级机器学习方法来学习ITBN模型的结构和参数。实验结果表明,通过对时空依赖性进行推理,在对涉及并行事件和顺序事件的复杂活动进行建模和识别时,所提出的模型可显着提高性能。

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