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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Region-based image retrieval with high-level semantics using decision tree learning
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Region-based image retrieval with high-level semantics using decision tree learning

机译:使用决策树学习的具有高级语义的基于区域的图像检索

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Semantic-based image retrieval has attracted great interest in recent years. This paper proposes a region-based image retrieval system with high-level semantic learning. The key features of the system are: (1) it supports both query by keyword and query by region of interest. The system segments an image into different regions and extracts low-level features of each region. From these features, high-level concepts are obtained using a proposed decision tree-based learning algorithm named DT-ST. During retrieval, a set of images whose semantic concept matches the query is returned. Experiments on a standard real-world image database confirm that the proposed system significantly improves the retrieval performance, compared with a conventional content-based image retrieval system. (2) The proposed decision tree induction method DT-ST for image semantic learning is different from other decision tree induction algorithms in that it makes use of the semantic templates to discretize continuous-valued region features and avoids the difficult image feature discretization problem. Furthermore, it introduces a hybrid tree simplification method to handle the noise and tree fragmentation problems, thereby improving the classification performance of the tree. Experimental results indicate that DT-ST outperforms two well-established decision tree induction algorithms ID3 and C4.5 in image semantic learning. (c) 2007 Elsevier Ltd. All rights reserved.
机译:近年来,基于语义的图像检索引起了极大的兴趣。本文提出了一种具有高级语义学习的基于区域的图像检索系统。该系统的主要功能是:(1)它既支持按关键字查询,也支持按感兴趣区域查询。该系统将图像分割成不同的区域,并提取每个区域的低级特征。从这些功能中,可以使用提议的基于决策树的学习算法DT-ST获得高级概念。在检索期间,将返回语义概念与查询匹配的一组图像。在标准的真实世界图像数据库上进行的实验证实,与传统的基于内容的图像检索系统相比,该系统显着提高了检索性能。 (2)提出的图像语义学习决策树归纳方法DT-ST与其他决策树归纳算法的不同之处在于,它利用语义模板对连续值区域特征进行离散化,避免了图像特征离散化的难题。此外,它引入了一种混合树简化方法来处理噪声和树碎片问题,从而提高了树的分类性能。实验结果表明,在图像语义学习中,DT-ST优于两种成熟的决策树归纳算法ID3和C4.5。 (c)2007 Elsevier Ltd.保留所有权利。

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