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Recent Advances in Large Scale Image Search

机译:大规模图像搜索的最新进展

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This paper introduces recent methods for large scale image search. State-of-the-art methods build on the bag-of-features image representation. We first analyze bag-of-features in the framework of approximate nearest neighbor search. This shows the sub-optimality of such a representation for matching descriptors and leads us to derive a more precise representation based on 1) Hamming embedding (HE) and 2) weak geometric consistency constraints (WGC). HE provides binary signatures that refine the matching based on visual words. WGC filters matching descriptors that are not consistent in terms of angle and scale. HE and WGC are integrated within an inverted file and are efficiently exploited for all images, even in the case of very large datasets. Experiments performed on a dataset of one million of images show a significant improvement due to the binary signature and the weak geometric consistency constraints, as well as their efficiency. Estimation of the full geometric transformation, i.e., a re-ranking step on a short list of images, is complementary to our weak geometric consistency constraints and allows to further improve the accuracy.
机译:本文介绍了大规模图像搜索的最新方法。最先进的方法建立在功能包图像表示之上。我们首先在近似最近邻居搜索的框架中分析特征包。这显示了匹配描述符的这种表示的次优性,并导致我们基于1)汉明嵌入(HE)和2)弱几何一致性约束(WGC)得出更精确的表示。 HE提供了二进制签名,可以根据视觉单词优化匹配。 WGC会筛选角度和比例不一致的匹配描述符。 HE和WGC集成在一个反向文件中,即使在非常大的数据集的情况下,也可以有效地用于所有图像。在具有一百万个图像的数据集上进行的实验表明,由于二进制签名和较弱的几何一致性约束及其效率,其效果得到了显着改善。估计完整的几何变换,即对一小段图像重新排序,这是对我们弱的几何一致性约束的补充,可以进一步提高精度。

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