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Mining Association Rules between Low-level Image Features and High-level Concepts

机译:挖掘低级图像特征与高级概念之间的挖掘结构规则

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In image similarity retrieval systems, color is one of the most widely used features. Users who are not well versed with the image domain characteristics might be more comfortable in working with an Image Retrieval System that allows specification of a query in terms of keywords, thus eliminating the usual intimidation in dealing with very primitive features. In this paper we present two approaches to automatic image annotation, by finding those rules underlying the links between the low-level features and the high-level concepts associated with images. One scheme uses global color image information and classification tree based techniques. Through this supervised learning approach we are able to identify relationships between global color-based image features and some textual descriptors. In the second approach, using low-level image features that capture local color information and through a k-means based clustering mechanism, images are organized in clusters such that images that are "similar" are located in the same cluster. For each cluster, a set of rules is derived to capture the association between the localized color-based image features and the textual descriptors relevant to the cluster.
机译:在图像相似性检索系统中,颜色是最广泛使用的功能之一。与图像域特征不太精通的用户在使用图像检索系统方面可能更舒适,允许在关键字方面规范查询,从而消除了处理非常原始的特征的通常恐吓。在本文中,我们通过查找低级功能与与图像相关联的高级概念之间的链接基础的那些规则来提出自动图像注释的两种方法。一种方案使用全局彩色图像信息和基于分类树的技术。通过这种监督学习方法,我们能够识别全局基于颜色的图像特征和一些文本描述符之间的关系。在第二种方法中,使用捕获本地颜色信息的低级图像特征和通过基于K均值的聚类机制,在群集中组织图像,使得位于同一群集中的图像。对于每个群集,导出了一组规则以捕获本地化基于颜色的图像特征与与群集相关的文本描述符之间的关联。

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