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Content Based Image Clustering Technique Using Statistical Features and Genetic Algorithm

机译:基于统计特征和遗传算法的基于内容的图像聚类技术

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Text based-image clustering (TBIC) is an insufficient approach for clustering related web images. It is a challenging task to abstract the visual features of images with the support of textual information in a database. In content-based image clustering (CBIC), image data are clustered on the foundation of specific features like texture, colors, boundaries, shapes. In this paper, an effective CBIC) technique is presented, which uses texture and statistical features of the images. The statistical features or moments of colors (mean, skewness, standard deviation, kurtosis, and variance) are extracted from the images. These features are collected in a one dimension array, and then genetic algorithm (GA) is applied for image clustering. The extraction of features gave a high distinguishability and helped GA reach the solution more accurately and faster.
机译:基于文本的图像聚类(TBIC)不足以聚类相关的Web图像。在数据库中借助文本信息来抽象图像的视觉特征是一项艰巨的任务。在基于内容的图像聚类(CBIC)中,图像数据在特定特征(例如纹理,颜色,边界,形状)的基础上聚类。本文提出了一种有效的CBIC技术,该技术利用了图像的纹理和统计特征。从图像中提取颜色的统计特征或矩(均值,偏度,标准差,峰度和方差)。将这些特征收集在一维数组中,然后将遗传算法(GA)应用于图像聚类。特征的提取具有很高的可区分性,有助于GA更准确,更快地找到解决方案。

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