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Image Interpretation by Combining Ontologies and Bayesian Networks

机译:结合本体和贝叶斯网络的图像解释

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摘要

A drawback of current computer vision techniques is that, in contrast to human perception that makes use of logic-based rules, they fail to benefit from knowledge that is provided explicitly. In this work we propose a framework that performs knowledge-assisted analysis of visual content using ontologies to model domain knowledge and conditional probabilities to model the application context. A bayesian network (BN) is used for integrating statistical and explicit knowledge and perform hypothesis testing using evidence-driven probabilistic inference. Our results show significant improvements compared to a baseline approach that does not make any use of context or domain knowledge.
机译:当前计算机视觉技术的一个缺点是,与使用基于逻辑的规则的人类感知相反,它们无法从显式提供的知识中受益。在这项工作中,我们提出了一个框架,该框架使用本体对领域知识进行建模,对视觉内容进行知识辅助分析,而对应用程序上下文进行条件概率建模。贝叶斯网络(BN)用于集成统计知识和显式知识,并使用证据驱动的概率推断来执行假设检验。与不使用上下文或领域知识的基准方法相比,我们的结果显示出显着改进。

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