Link and code: Fast indexing with graphs and compact regression codes

2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition(2018)

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摘要
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.
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关键词
public benchmarks,memory compression,memory requirements,nested graphs,search strategy,graph structure,quantization,indexed vectors,compact representations,graph traversal,single server,memory constraint,outstanding speed-accuracy trade-offs,graph walks,similarity search approaches,compact regression codes,fast indexing,memory size 64.0 Byte to 128.0 Byte
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