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    Hierarchical Link and Code: Efficient Similarity Search for Billion-Scale Image Sets

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    Date
    2021
    Author
    Yang, Kaixiang
    Wang, Hongya
    Du, Ming
    Wang, Zhizheng
    Tan, Zongyuan
    Xiao, Yingyuan
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    Abstract
    Similarity search is an indispensable component in many computer vision applications. To index billions of images on a single commodity server, Douze et al. introduced L&C that works on operating points considering 64-128 bytes per vector. While the idea is inspiring, we observe that L&C still suffers the accuracy saturation problem, which it is aimed to solve. To this end, we propose a simple yet effective two-layer graph index structure, together with dual residual encoding, to attain higher accuracy. Particularly, we partition vectors into multiple clusters and build the top-layer graph using the corresponding centroids. For each cluster, a subgraph is created with compact codes of the first-level vector residuals. Such an index structure provides better graph search precision as well as saves quite a few bytes for compression. We employ the second-level residual quantization to re-rank the candidates obtained through graph traversal, which is more efficient than regression-from-neighbors adopted by L&C. Comprehensive experiments show that our proposal obtains over 30% higher recall@1 than the state-of-thearts, and achieves up to 7.7x and 6.1x speedup over L&C on Deep1B and Sift1B, respectively.
    BibTeX
    @inproceedings {10.2312:pg.20211397,
    booktitle = {Pacific Graphics Short Papers, Posters, and Work-in-Progress Papers},
    editor = {Lee, Sung-Hee and Zollmann, Stefanie and Okabe, Makoto and Wünsche, Burkhard},
    title = {{Hierarchical Link and Code: Efficient Similarity Search for Billion-Scale Image Sets}},
    author = {Yang, Kaixiang and Wang, Hongya and Du, Ming and Wang, Zhizheng and Tan, Zongyuan and Xiao, Yingyuan},
    year = {2021},
    publisher = {The Eurographics Association},
    ISBN = {978-3-03868-162-5},
    DOI = {10.2312/pg.20211397}
    }
    URI
    https://doi.org/10.2312/pg.20211397
    https://diglib.eg.org:443/handle/10.2312/pg20211397
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    • PG2021 Short Papers, Posters, and Work-in-Progress Papers

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    Eurographics Association copyright © 2013 - 2023 
    Send Feedback | Contact - Imprint | Data Privacy Policy | Disable Google Analytics
    Theme by @mire NV
    System hosted at  Graz University of Technology.
    TUGFhA