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A smart content-based image retrieval system based on color and texture feature

机译:基于颜色和纹理特征的基于内容的智能图像检索系统

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摘要

In this paper, three image features are proposed for image retrieval. In addition, a feature selection technique is also brought forward to select optimal features to not only maximize the detection rate but also simplify the computation of image retrieval. The first and second image features are based on color and texture features, respectively called color co-occurrence matrix (CCM) and difference between pixels of scan pattern (DBPSP) in this paper. The third image feature is based on color distribution, called color histogram for K-mean (CHKM).rnCCM is the conventional pattern co-occurrence matrix that calculates the probability of the occurrence of same pixel color between each pixel and its adjacent ones in each image, and this probability is considered as the attribute of the image. According to the sequence of motifs of scan patterns, DBPSP calculates the difference between pixels and converts it into the probability of occurrence on the entire image. Each pixel color in an image is then replaced by one color in the common color palette that is most similar to color so as to classify all pixels in image into k-cluster, called the CHKM feature.rnDifference in image properties and contents indicates that different features are contained. Some images have stronger color and texture features, while others are more sensitive to color and spatial features. Thus, this study integrates CCM, DBPSP, and CHKM to facilitate image retrieval. To enhance image detection rate and simplify computation of image retrieval, sequential forward selection is adopted for feature selection. Besides, based on the image retrieval system (CTCHIRS), a series of analyses and comparisons are performed in our experiment. Three image databases with different properties are used to carry out feature selection. Optimal features are selected from original features to enhance the detection rate.
机译:本文提出了三种图像特征进行图像检索。另外,还提出了一种特征选择技术以选择最佳特征,以不仅使检测率最大化而且还简化了图像检索的计算。第一和第二图像特征基于颜色和纹理特征,在本文中分别称为颜色共现矩阵(CCM)和扫描图案像素之间的差异(DBPSP)。第三个图像特征基于颜色分布,称为K均值颜色直方图(CHKM).rnCCM是传统的图案共现矩阵,用于计算每个像素与其每个相邻像素之间出现相同像素颜色的概率图像,并且该概率被视为图像的属性。根据扫描图案的图案顺序,DBPSP计算像素之间的差异,并将其转换为整个图像上出现的概率。然后将图像中的每种像素颜色替换为与颜色最相似的通用调色板中的一种颜色,以便将图像中的所有像素分类为k群集,称为CHKM功能。rn图像属性和内容的差异表明不同包含功能。一些图像具有更强的颜色和纹理特征,而另一些图像对颜色和空间特征更敏感。因此,这项研究整合了CCM,DBPSP和CHKM来促进图像检索。为了提高图像检测率并简化图像检索的计算,采用顺序正向选择进行特征选择。此外,基于图像检索系统(CTCHIRS),我们在实验中进行了一系列分析和比较。使用三个具有不同属性的图像数据库来进行特征选择。从原始特征中选择最佳特征以提高检测率。

著录项

  • 来源
    《Image and Vision Computing》 |2009年第6期|658-665|共8页
  • 作者单位

    Department of Information Science, National Taichung Institute of Technology, No. 129, Sec. 3, Sanmin Rd., 404 Taichung, Taiwan, ROC;

    Department of Information Science, National Taichung Institute of Technology, No. 129, Sec. 3, Sanmin Rd., 404 Taichung, Taiwan, ROC;

    Department of Management Information Systems, National Chung Hsing University, No. 250, Kuokuang Rd., Taichung, Taiwan, ROC;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    image retrieval; color; texture; co-occurrence; motif; feature selection;

    机译:图像检索;颜色;质地;共现主题;功能选择;

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