Concept-based Image Clustering and Summarization of Event-related Image Collections

C. Papagiannopoulou, V. Mezaris
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引用次数: 18

Abstract

In this work we deal with the problem of summarizing image collections that correspond to a single event each. For this, we adopt a clustering-based approach, and we perform a comparative study of different clustering algorithms and image representations. As part of this study, we propose and examine the possibility of using trained concept detectors so as to represent each image with a vector of concept detector responses, which is then used as input to the clustering algorithms. A technique which indicates which concepts are the most informative ones for clustering is also introduced, allowing us to prune the employed concept detectors. Following the clustering, a summary of the collection (thus, also of the event) can be formed by selecting one or more images per cluster, according to different possible criteria. The combination of clustering and concept-based image representation is experimentally shown to result in the formation of clusters and summaries that match well the human expectations.
基于概念的图像聚类和事件相关图像集合的汇总
在这项工作中,我们处理总结对应于单个事件的图像集合的问题。为此,我们采用了基于聚类的方法,并对不同的聚类算法和图像表示进行了比较研究。作为本研究的一部分,我们提出并研究了使用训练过的概念检测器的可能性,以便用概念检测器响应向量表示每个图像,然后将其用作聚类算法的输入。还介绍了一种技术,该技术表明哪些概念对聚类来说信息量最大,允许我们修剪所使用的概念检测器。在聚类之后,可以根据不同的可能标准,通过在每个聚类中选择一个或多个图像来形成集合的摘要(因此也是事件的摘要)。实验表明,聚类和基于概念的图像表示相结合可以形成符合人类期望的聚类和摘要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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