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Image Retrieval by Integrating Global Correlation of Color and Intensity Histograms with Local Texture Features

机译:通过与本地纹理特征集成全局与强度直方图的全局相关性的图像检索

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Research on Content-Based Image Retrieval is being done to improvise existing methods. Most of the techniques that were proposed use color and texture features independently. In this paper, to get the correspondence between color and texture, we use congruence on Hue, Saturation, and Intensity by using inter-channel voting. Gray Level Co-occurrence Matrix (GLCM) on Diagonally Symmetric Pattern is computed to get texture features of an image. The similarity metrics between two images is computed using congruence and GLCM. To measure the performance; Average Precision Rate (APR), Average Recall Rate (ARR), F-measure, Average Normalized Modified Retrieval Rank (ANMRR) are calculated. In addition to these parameters, one more parameter has been proposed: Total Minimum Retrieval Epoch (TMRE) to calculate the average number of images to be traversed for each query image to get all the images of that category. To validate the performance of the proposed method, it has been applied to six image databases: Corel-1 K, Corel-5 K, Corel-10 K, VisTex, STex, and Color Brodatz. The results of most of the databases show significant improvement.
机译:正在进行基于内容的图像检索的研究以即可即兴创作现有方法。大部分技术都是独立使用颜色和纹理的特征。在本文中,通过使用渠道间投票,我们在色调和纹理之间的对应中使用了同一年的色调,饱和度和强度。对角对称模式的灰度级共生矩阵(GLCM)被计算为获取图像的纹理特征。使用同时和GLCM计算两个图像之间的相似度量。衡量性能;计算平均精度率(APR),计算平均召回率(ARR),F测量,平均归一化修正的修改检索等级(ANMRR)。除了这些参数之外,还提出了一个参数:总最小检索epoch(tmre)计算每个查询图像的遍历的平均图像数量,以获取该类别的所有图像。为了验证所提出的方法的性能,它已应用于六个图像数据库:Corel-1 K,Corel-5 K,Corel-10 K,Vistex,Stex和Color Brodatz。大多数数据库的结果显示出显着的改善。

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