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Tagging and Retrieving Images with Co-Occurrence Models: from Corel to Flickr

机译:使用共现模型标记和检索图像:从Corel到Flickr

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This paper presents two models for content-based automatic image annotation and retrieval in web image repositories, based on the co-occurrence of tags and visual features in the images. In particular, we show how additional measures can be taken to address the noisy and limited tagging problems, in datasets such as Flickr, to improve performance. An image is represented as a bag of visual terms computed using edge and color information. The first model begins with a naive Bayes approach and then improves upon it by using image pairs as single documents to significantly reduce the noise and increase annotation performance. The second method models the visual features and tags as a graph, and uses query expansion techniques to improve the retrieval performance. We evaluate our methods on the commonly used 150 concept Corel dataset, and a much harder 2000 concept Flickr dataset.
机译:本文基于图像中标签和视觉特征的共现,提出了两种用于在Web图像存储库中进行基于内容的自动图像注释和检索的模型。特别是,我们展示了如何采取其他措施来解决Flickr等数据集中的嘈杂和有限的标记问题,从而提高性能。图像表示为使用边缘和颜色信息计算出的视觉术语袋。第一个模型从朴素的贝叶斯方法开始,然后通过将图像对用作单个文档来进行改进,以显着降低噪声并提高注释性能。第二种方法将视觉特征和标记建模为图形,并使用查询扩展技术来提高检索性能。我们在常用的150个概念Corel数据集和更难的2000个概念Flickr数据集上评估我们的方法。

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