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Image retrieval with reciprocal and shared nearest neighbors

机译:互惠且共享最近邻的图像检索

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Content-based image retrieval systems typically rely on a similarity measure between image vector representations, such as in bag-of-words, to rank the database images in decreasing order of expected relevance to the query. However, the inherent asymmetry of k-nearest neighborhoods is not properly accounted for by traditional similarity measures, possibly leading to a loss of retrieval accuracy. This paper addresses this issue by proposing similarity measures that use neighborhood information to assess the relationship between images. First, we extend previous work on k-reciprocal nearest neighbors to produce new measures that improve over the original primary metric. Second, we propose measures defined on sets of shared nearest neighbors for reranking the shortlist. Both these methods are simple, yet they significantly improve the accuracy of image search engines on standard benchmark datasets.
机译:基于内容的图像检索系统通常依赖于图像矢量表示之间的相似性度量(例如在词袋中),以按与查询相关的预期降序对数据库图像进行排名。但是,传统的相似性度量无法正确解决k最近邻的固有不对称性,这可能会导致检索精度的损失。本文通过提出使用邻域信息评估图像之间关系的相似性度量来解决此问题。首先,我们扩展了关于k倒数最近邻的先前工作,以产生比原始主要度量有所改进的新度量。其次,我们提出了在共享的最近邻居集合上定义的措施,以对候选清单进行排名。这两种方法都很简单,但是它们显着提高了标准基准数据集上图像搜索引擎的准确性。

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