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A Comparison of Relevance Feedback Strategies in CBIR

机译:CBIR中相关反馈策略的比较

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Relevance Feedback (RF) is considered to be very useful in reducing semantic gap and thus enhancing accuracy of a Content-Based Image Retrieval system. In this paper, we have given a brief overview of research done in this area with an emphasis on feature re-weighting approach, a popular RF technique. We have also discussed an instancebased approach that has been introduced very recently. We considered image retrieval as a dichotomous classification problem and compared performances of the two RF strategies with four different datasets, with number of images ranging from 1000 to 19511.
机译:相关性反馈(RF)被认为在减少语义间隙中非常有用,从而提高基于内容的图像检索系统的准确性。在本文中,我们已经简要概述了在该领域完成的研究,重点是特征重量方法,是一种流行的RF技术。我们还讨论了最近介绍的实例方法。我们将图像检索视为二分法分类问题,并与四个不同的数据集进行了两种RF策略的性能,图像数量为1000至19511。

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