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Automatic Image Annotation Using Color K-Means Clustering

机译:使用颜色K均值聚类的自动图像注释

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Automatic image annotation is a process of modeling a human in assigning words to images based on visual observations. It is essential as manual annotation is time consuming especially for large databases and there is no standard captioning procedure because it is based on human perception. This paper discusses implementation of automatic image annotation using K-means clustering algorithm to annotate the colors with the appropriate words by using predefined colors. Experiments are conducted to identify the number of cen-troids, distance measures and initialization mode for the best clustering results. A prototype of an automatic image annotation is developed and then tested using thirty-five beach scenery photographs. Results showed that annotating image using evenly-spaced initialization mode and 100 centroids measured using City-Block distance function managed to achieve a commendable 75% precision rate.
机译:自动图像注释是基于视觉观察对人进行建模以将单词分配给图像的过程。手动批注非常耗时,尤其是对于大型数据库,而且因为它基于人类的感知,所以没有标准的字幕程序,因此非常重要。本文讨论了使用K-means聚类算法通过使用预定义的颜色用适当的单词对颜色进行注释来实现自动图像注释的方法。为了确定最佳聚类结果,进行了实验以识别双离心线的数量,距离度量和初始化模式。开发了自动图像注释的原型,然后使用35张海滩风光照片进行了测试。结果表明,使用均匀间隔的初始化模式的批注图像和使用City-Block距离函数测量的100个质心设法获得了可观的75%精度。

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