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An Improved Seed Point Selection-Based Unsupervised Color Clustering for Content-Based Image Retrieval Application

机译:基于内容的图像检索应用程序的基于种子点选择的无监督彩色聚类

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摘要

The images involved in the content-based image retrieval (CBIR) applications are collectively represented by features such as color, texture and shape. The precision of the CBIR application relies on the key features used in image representation and its similarity measure. In CBIR, dominant color feature extraction is affected by the predefined intervals used in color quantization. The proposed work mainly concentrates on extracting the dominant color information of the image using the clustering process. The clustering process is initiated by the proposed seed point's selection approach. This approach derives the number of seed points using the first order statistical measure and maximum range of the distributed pixel values. Moreover, this work gives equal priority to dominant color and its occurrence information in calculating the similarity between query and database images. Finally, the standard databases such as SIMPLIcity, Corel-10k, OT-scene, Oxford flower and GHIM are taken to investigate the performance of the proposed dominant color based image retrieval application.
机译:基于内容的图像检索(CBIR)应用涉及的图像由诸如颜色,纹理和形状的特征统称。 CBIR应用程序的精度依赖于图像表示和其相似度测量中使用的关键特征。在CBIR中,主导颜色特征提取受颜色量化中使用的预定间隔的影响。拟议的工作主要集中在使用聚类过程中提取图像的主导颜色信息。聚类过程由所提出的种子点的选择方法启动。这种方法使用第一阶统计测量和分布式像素值的最大范围来导出种子点的数量。此外,该工作在计算查询和数据库图像之间的相似性时,对主导颜色及其发生信息提供了相同的优先级。最后,诸如简单性,Corel-10K,OT场景,牛津花和GHIM的标准数据库探讨了所提出的主要基于颜色的图像检索应用的性能。

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