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Link and Code: Fast Indexing with Graphs and Compact Regression Codes

机译:链接和代码:使用图形和紧凑回归代码进行快速索引

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Similarity search approaches based on graph walks have recently attained outstanding speed-accuracy trade-offs, taking aside the memory requirements. In this paper, we revisit these approaches by considering, additionally, the memory constraint required to index billions of images on a single server. This leads us to propose a method based both on graph traversal and compact representations. We encode the indexed vectors using quantization and exploit the graph structure to refine the similarity estimation. In essence, our method takes the best of these two worlds: the search strategy is based on nested graphs, thereby providing high precision with a relatively small set of comparisons. At the same time it offers a significant memory compression. As a result, our approach outperforms the state of the art on operating points considering 64-128 bytes per vector, as demonstrated by our results on two billion-scale public benchmarks.
机译:除了内存需求以外,基于图遍历的相似性搜索方法最近还获得了出色的速度精度折衷。在本文中,我们通过另外考虑在单个服务器上索引数十亿张图像所需的内存约束来重新研究这些方法。这使我们提出了一种基于图遍历和紧凑表示的方法。我们使用量化对索引向量进行编码,并利用图结构来细化相似度估计。从本质上讲,我们的方法充分利用了这两个方面:搜索策略基于嵌套图,从而以相对较少的比较集提供了较高的精度。同时,它提供了显着的内存压缩。结果,我们的方法在考虑每个向量64-128字节的工作点方面优于最新技术,正如我们在20亿规模的公共基准上的结果所证明的那样。

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