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Learning graph fusion for query and database specific image retrieval

机译:学习图融合用于查询和数据库特定的图像检索

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In this paper, we propose a graph-based image retrieval algorithm via query and database specific feature fusion. While existing feature fusion approaches exist for image retrieval, they typically do not consider the image database of interest (i.e., to be retrieved) for observing the associated feature contributions. In the offline learning stage, our proposed method first identifies representative features for describing images to be retrieved. Given a query input, we further exploit and integrate its visual information and utilize graph-based fusion for performing query-database specific retrieval. In our experiments, we show that our proposed method achieves promising performance on the benchmark database of UKbench, and performs favorably against recent fusion-based image retrieval approaches.
机译:在本文中,我们提出了一种通过查询和数据库特定特征融合的基于图的图像检索算法。尽管存在用于图像检索的现有特征融合方法,但是它们通常不考虑用于观察相关特征贡献的感兴趣的图像数据库(即,将被检索)。在离线学习阶段,我们提出的方法首先确定用于描述要检索图像的代表性特征。给定查询输入,我们将进一步利用和集成其可视信息,并利用基于图形的融合来执行查询数据库特定的检索。在我们的实验中,我们证明了我们提出的方法在UKbench的基准数据库上取得了令人满意的性能,并且与最近的基于融合的图像检索方法相比表现出色。

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