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Content Based Image Retrieval by combining color, texture and CENTRIST

机译:基于内容的图像检索通过组合颜色,纹理和中心点

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This paper presents a novel framework for Content Based Image Retrieval(CBIR), which combines color, texture and spatial structure of image. The proposed method uses color, texture and spatial structure descriptors to form a feature vector. Images are segmented into regions to extract local color, texture and CENTRIST(CENsus Transform hISTogram) features respectively. Multiple-instance learning (MIL) and Diverse Density(DD) are incorporated with regions as instances to find the objective instance. In addition, to denote the whole structure of image better, we perform PCA to CENTRIST features of all images, i.e. spatial Principal component Analysis of Census Transform(spatial PACT). This framework integrates three features to enhance the retrieval performance. Experiments on COREL standard database invalidate the proposed method by comparing with some state-of-the-art methods.
机译:本文介绍了基于内容的图像检索(CBIR)的新框架,其结合了图像的颜色,纹理和空间结构。所提出的方法使用颜色,纹理和空间结构描述符来形成特征向量。图像分段为区域以分别提取局部颜色,纹理和中心点(人口普查变换直方图)特征。多实例学习(MIL)和不同密度(DD)与区域作为实例结合在一起,以找到目标实例。此外,为了表示图像的整体结构更好,我们执行PCA以中心图像的中心特征,即人口普查变换(空间PACT)的空间主成分分析。该框架集成了三个功能来增强检索性能。 COREL标准数据库的实验通过与某些最先进的方法进行比较使得所提出的方法无效。

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