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Expressing Relational and Temporal Knowledge in Visual Probabilistic Networks

机译:在视觉概率网络中表达关系和时间知识

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Bayesian networks have been used extensively in diagnostic tasks such as medicine, where they represent the dependency relations between a set of symptoms and a set of diseases. A criticism of this type of knowledge representation is that it is restricted to this kind of task, and that it cannot cope with the knowledge required in other artificial intelligence applications. For example, in computer vision, we require the ability to model complex knowledge, including temporal and relational factors. In this paper we extend Bayesian networks to model relational and temporal knowledge for high-level vision. These extended networks have a simple structure which permits us to propagate probability efficiently. We have applied them to the domain of endoscopy, illustrating how the general modelling principles can be used in specific cases.
机译:贝叶斯网络已广泛用于诊断任务,例如医学,它们代表一组症状和一组疾病之间的依赖关系。对这种类型的知识表示的批评是,它仅限于此类任务,并且无法应付其他人工智能应用程序中所需的知识。例如,在计算机视觉中,我们需要具有对复杂知识(包括时间和关系因素)进行建模的能力。在本文中,我们扩展了贝叶斯网络以对高水平视觉的关系和时间知识进行建模。这些扩展的网络具有简单的结构,可让我们有效地传播概率。我们已将它们应用于内窥镜检查领域,说明了如何在特定情况下使用一般的建模原理。

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