Discriminative Supervised Hashing for Cross-Modal Similarity Search

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摘要

With the advantages of low storage cost and high retrieval efficiency, hashing techniques have recently been an emerging topic in cross-modal similarity search. As multiple modal data reflect similar semantic content, many works aim at learning unified binary codes. However, discriminative hashing features learned by these methods are not adequate. This results in lower accuracy and robustness. We propose a novel hashing learning framework which jointly performs classifier learning, subspace learning, and matrix factorization to preserve class-specific semantic content, termed Discriminative Supervised Hashing (DSH), to learn the discriminative unified binary codes for multi-modal data. Besides, reducing the loss of information and preserving the non-linear structure of data, DSH non-linearly projects different modalities into the common space in which the similarity among heterogeneous data points can be measured. Extensive experiments conducted on the three publicly available datasets demonstrate that the framework proposed in this paper outperforms several state-of-the-art methods.

论文关键词:Cross-modal retrieval,Supervised hashing,Unified binary codes,Matrix factorization,Discriminative

论文评审过程:Received 17 April 2019, Accepted 20 June 2019, Available online 19 July 2019, Version of Record 28 July 2019.

论文官网地址:https://doi.org/10.1016/j.imavis.2019.06.004