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Mining salient images from a large-scale blogosphere

机译:从大规模博客圈中挖掘显着图像

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User-generated images are now prevalent across social media platforms, such as Facebook, Twitter, and various blogospheres. These images can be categorized and ranked based on their relevant topics. In this paper, we present and compare candidate schemes for mining salient images related to a specific topic or object among a large number of images from a blogosphere. Identifying salient images consists of several steps: calculating the similarity between images, k-means clustering images, and ranking images. In each step, we propose a set of alternatives and as a result, present an optimal combination scheme by conducting an empirical comparison of the performance of each scheme. Furthermore, to address scalability, we also present a distributed version of the schemes and experimental results based on MapReduce on top of a Hadoop environment.
机译:用户生成的图像现在在整个社交媒体平台(如Facebook,Twitter和各种Blogssphere)中都很普遍。可以根据它们的相关主题对这些图像进行分类和排名。在本文中,我们提出并比较了候选方案,这些方案用于从Blogosphere的大量图像中挖掘与特定主题或对象相关的显着图像。识别显着图像包括几个步骤:计算图像之间的相似度,k均值聚类图像和对图像进行排名。在每个步骤中,我们提出了一组备选方案,因此,通过对每种方案的性能进行经验比较,提出了一种最佳组合方案。此外,为了解决可伸缩性,我们还基于Hadoop环境在MapReduce上提供了该方案的分布式版本和实验结果。

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