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Improving Content-Based Image Retrieval by Identifying Least and Most Correlated Visual Words

机译:通过识别最小和最相关的视觉单词来改进基于内容的图像检索

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In this paper, we propose a model for direct incorporation of image content into a (short-term) user profile based on correlations between visual words and adaptation of the similarity measure. The relationships between visual words at different contextual levels are explored. We introduce and compare various notions of correlation, which in general we will refer to as image-level and proximity-based. The information about the most and the least correlated visual words can be exploited in order to adapt the similarity measure. The evaluation, preceding an experiment involving real users (future work), is performed within the Pseudo Relevance Feedback framework. We test our new method on three large data collections, namely MIRFlickr, ImageCLEF, and a collection from British National Geological Survey (BGS). The proposed model is computationally cheap and scalable to large image collections.
机译:在本文中,我们提出了一种基于视觉词与相似度测量的适应之间的相关性将图像内容直接掺入(短期)用户轮廓中的模型。探索了不同上下文级别的视觉单词之间的关系。我们介绍并比较各种相关的相关概念,这通常是指作为图像级和基于近似的概念。可以利用关于最多和最不相关的视觉词的信息以适应相似度测量。在涉及真实用户(未来工作)的实验之前的评估在伪相关反馈框架内执行。我们在三个大型数据收集,即Mirflickr,ImageClef和英国国家地质调查(BGS)的集合中测试我们的新方法。所提出的模型是计算方式便宜和可扩展到大图像集合。

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