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Semantic modeling of natural scenes by local binary pattern

机译:通过局部二进制模式对自然场景进行语义建模

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摘要

Automatic image annotation is an efficient and promising solution in content based image retrieval system applications to process very large databases via keywords. The basic idea of semantic modeling is to describe local image regions into semantic concepts using low level features such as color and texture. These local image region descriptions are combined to a global image representation that can be used for scene categorization and retrieval. In this paper, Local Binary Pattern features and neighborhood prior information are used as texture and spatial features for local image representation that allows access to natural scenes. K-Means classifier has been used to support automatic image annotation of local image region into semantic classes such as water, sky, and trees. Extensive experiments on databases like COREL, shows that the proposed technique performs well in scene classification.
机译:在基于内容的图像检索系统应用程序中,自动图像注释是一种有效且有前途的解决方案,可通过关键字处理非常大的数据库。语义建模的基本思想是使用低级特征(例如颜色和纹理)将局部图像区域描述为语义概念。这些局部图像区域描述被组合为可用于场景分类和检索的全局图像表示。在本文中,将本地二值模式特征和邻域先验信息用作允许访问自然场景的本地图像表示的纹理和空间特征。 K-Means分类器已用于支持将本地图像区域的图像自动注释为语义类,例如水,天空和树木。在像COREL这样的数据库上进行的大量实验表明,该技术在场景分类中表现良好。

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