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Pseudo-relevance feedback diversification of social image retrieval results

机译:伪相关反馈的社会形象检索结果多样化

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摘要

In this paper we introduce a novel pseudo-relevance feedback (RF) perspective to social image search results diversification. Traditional RF techniques introduce the user in the processing loop by harvesting feedback about the relevance of the query results. This information is used for recomputing a better representation of the needed data. The novelty of our work is in exploiting the automatic generation of user feedback in a completely unsupervised diversification scenario, where positive and negative examples are used to generate better representations of visual classes in the data. First, user feedback is simulated automatically by selecting positive and negative examples from the initial query results. Then, an unsupervised hierarchical clustering is used to re-group images according to their content. Diversification is finally achieved with a re-ranking approach of the previously achieved clusters. Experimental validation on real-world data from Flickr shows the benefits of this approach achieving very promising results.
机译:在本文中,我们介绍了一种新颖的伪相关反馈(RF)视角来进行社会图像搜索结果多样化。传统的RF技术通过收集有关查询结果相关性的反馈将用户引入处理循环。此信息用于重新计算所需数据的更好表示。我们工作的新颖性在于在完全无人监督的多元化场景中利用用户反馈的自动生成,其中使用正例和负例来生成数据中可视类的更好表示。首先,通过从初始查询结果中选择肯定和否定示例来自动模拟用户反馈。然后,使用无监督的层次聚类根据图像的内容对图像进行重新分组。最终,通过对先前实现的集群进行重新排序,实现了多元化。来自Flickr的真实数据的实验验证表明,这种方法的好处是可以取得非常可喜的结果。

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