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Image clustering through community detection on hybrid image similarity graphs

机译:通过混合图像相似度图上的社区检测进行图像聚类

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The wide adoption of photo sharing applications such as Flickr© and the massive amounts of user-generated content uploaded to them raises an information overload issue for users. An established technique to overcome such an overload is to cluster images into groups based on their similarity and then use the derived clusters to assist navigation and browsing of the collection. In this paper, we present a community detection (i.e. graph-based clustering) approach that makes use of both visual and tagging features of images in order to efficiently extract groups of related images within large image collections. Based on experiments we conducted on a dataset comprising publicly available images from Flickr©, we demonstrate the efficiency of our method, the added value of combining visual and tag features and the utility of the derived clusters for exploring an image collection.
机译:照片共享应用程序(例如Flickr ©)的广泛采用以及上载到用户的大量用户生成的内容,给用户带来了信息过载的问题。克服这种过载的一项成熟技术是基于图像的相似性将图像聚类成组,然后使用派生的聚类来帮助对集合进行导航和浏览。在本文中,我们提出了一种社区检测(即基于图的聚类)方法,该方法利用了图像的视觉和标记功能,以便有效地提取大型图像集中的相关图像组。基于我们对包含Flickr ©的公共可用图像的数据集进行的实验,我们证明了该方法的效率,结合视觉和标记功能的附加价值以及派生的聚类用于探索遗传资源的效用。图像收集。

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