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Feedback-based Dynamically Weighted BoF for Image Retrieval

机译:基于反馈的图像检索的动态加权BOF

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Bag of Features (BoF) has been successfully exploited in content-based image retrieval for several years. Due to its performance and popularity, several extensions have been proposed that involve feature description, dictionary building, feature encoding and post-query process, etc. This paper proposes a dynamically weighting scheme for BoF-based image retrieval based on feedback. It involves two contributions: (i) analyzing the statistical distribution characteristic of similar BoF representations and (ii) computing weights dynamically based on the feedback obtained from different initial query results. We quantitatively evaluate the proposed method on two different databases. Experiments confirm that the proposed weighting scheme has better performance than the baseline of BoF-based image retrieval systems. Meanwhile, the results demonstrate the effectiveness of the weighting scheme in terms of the precision of top-N returned images.
机译:几年内成功地利用了基于内容的图像检索的特征(BOF)。 由于其性能和普及,提出了涉及特征描述,字典构建,特征编码和查询后过程等的几个扩展。本文提出了一种基于反馈的基于BOF的图像检索的动态加权方案。 它涉及两个贡献:(i)基于从不同初始查询结果获得的反馈,分析类似BOF表示的统计分布特性和(ii)计算权重。 我们定量评估两个不同数据库的提出方法。 实验证实,所提出的加权方案具有比基于BOF的图像检索系统的基线更好的性能。 同时,结果证明了加权方案在Top-N返回图像的精度方面的有效性。

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