Authors
Kai Li, Guo-Jun Qi, Jun Ye, Kien A Hua
Publication date
2016/9/19
Journal
IEEE transactions on pattern analysis and machine intelligence
Volume
39
Issue
9
Pages
1825-1838
Publisher
IEEE
Description
Hashing has attracted a great deal of research in recent years due to its effectiveness for the retrieval and indexing of large-scale high-dimensional multimedia data. In this paper, we propose a novel ranking-based hashing framework that maps data from different modalities into a common Hamming space where the cross-modal similarity can be measured using Hamming distance. Unlike existing cross-modal hashing algorithms where the learned hash functions are binary space partitioning functions, such as the sign and threshold function, the proposed hashing scheme takes advantage of a new class of hash functions closely related to rank correlation measures which are known to be scale-invariant, numerically stable, and highly nonlinear. Specifically, we jointly learn two groups of linear subspaces, one for each modality, so that features' ranking orders in different linear subspaces maximally preserve the …
Total citations
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Scholar articles
K Li, GJ Qi, J Ye, KA Hua - IEEE transactions on pattern analysis and machine …, 2016