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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Semantic modeling of natural scenes based on contextual Bayesian networks
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Semantic modeling of natural scenes based on contextual Bayesian networks

机译:基于上下文贝叶斯网络的自然场景语义建模

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摘要

This paper presents a novel approach based on contextual Bayesian networks (CBN) for natural scene modeling and classification. The structure of the CBN is derived based on domain knowledge, and parameters are learned from training images. For test images, the hybrid streams of semantic features of image content and spatial information are piped into the CBN-based inference engine, which is capable of incorporating domain knowledge as well as dealing with a number of input evidences, producing the category labels of the entire image. We demonstrate the promise of this approach for natural scene classification, comparing it with several state-of-art approaches.
机译:本文提出了一种基于上下文贝叶斯网络(CBN)的自然场景建模和分类的新颖方法。基于领域知识导出CBN的结构,并从训练图像中学习参数。对于测试图像,图像内容和空间信息的语义特征的混合流被输送到基于CBN的推理引擎中,该引擎能够合并领域知识并处理大量输入证据,从而生成分类标签。整个图像。我们将其与自然场景分类相比较,并与几种最新方法进行了比较,展示了该方法的前景。

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