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A Bayesian network-based framework for semantic image understanding

机译:基于贝叶斯网络的语义图像理解框架

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摘要

Current research in content-based semantic image understanding is largely confined to exemplar-based approaches built on low-level feature extraction and classification. The ability to extract both low-level and semantic features and perform knowledge integration of different types of features is expected to raise semantic image understanding to a new level. Belief networks, or Bayesian networks (BN), have proven to be an effective knowledge representation and inference engine in artificial intelligence and expert systems research. Their effectiveness is due to the ability to explicitly integrate domain knowledge in the network structure and to reduce a joint probability distribution to conditional independence relationships. In this paper, we present a general-purpose knowledge integration framework that employs BN in integrating both low-level and semantic features. The efficacy of this framework is demonstrated via three applications involving semantic understanding of pictorial images. The first application aims at detecting main photographic subjects in an image, the second aims at selecting the most appealing image in an event, and the third aims at classifying images into indoor or outdoor scenes. With these diverse examples, we demonstrate that effective inference engines can be built within this powerful and flexible framework according to specific domain knowledge and available training data to solve inherently uncertain vision problems. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:当前基于内容的语义图像理解研究主要局限于基于示例的基于低级特征提取和分类的方法。提取低级和语义特征并执行不同类型特征的知识集成的能力有望将语义图像理解提升到一个新的水平。信念网络或贝叶斯网络(BN)已被证明是人工智能和专家系统研究中有效的知识表示和推理引擎。它们的有效性是由于能够将领域知识明确集成到网络结构中,以及将联合概率分布减少为条件独立关系的能力。在本文中,我们提出了一个通用的知识集成框架,该框架使用BN来集成低级和语义功能。通过涉及图片图像语义理解的三个应用程序证明了该框架的有效性。第一个应用程序旨在检测图像中的主要摄影对象,第二个应用程序旨在选择事件中最吸引人的图像,第三个应用程序旨在将图像分类为室内或室外场景。通过这些不同的示例,我们证明可以根据特定的领域知识和可用的训练数据在此强大而灵活的框架内构建有效的推理引擎,以解决固有的不确定性视觉问题。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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