1. Discrete Semantic Matrix Factorization Hashing for Cross-Modal Retrieval
- Author
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Dongning Liu, Lunke Fei, Shaohua Teng, Haoliang Yuan, Genping Zhao, Jianyang Qin, and Wei Zhang
- Subjects
Theoretical computer science ,business.industry ,Computer science ,Hash function ,02 engineering and technology ,010501 environmental sciences ,Semantics ,01 natural sciences ,Matrix decomposition ,Constraint (information theory) ,Modal ,Discriminative model ,Discrete optimization ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Artificial intelligence ,Representation (mathematics) ,business ,0105 earth and related environmental sciences - Abstract
Hashing has been widely studied for cross-modal retrieval due to its promising efficiency and effectiveness in massive data analysis. However, most existing supervised hashing has the limitations of inefficiency for very large-scale search and intractable discrete constraint for hash codes learning. In this paper, we propose a new supervised hashing method, namely, Discrete Semantic Matrix Factorization Hashing (DSMFH), for cross-modal retrieval. First, we conduct the matrix factorization via directly utilizing the available label information to obtain a latent representation, so that both the inter-modality and intra-modality similarities are well preserved. Then, we simultaneously learn the discriminative hash codes and corresponding hash functions by deriving the matrix factorization into a discrete optimization. Finally, we adopt an alternatively iterative procedure to efficiently optimize the matrix factorization and discrete learning. Extensive experimental results on three widely used image-tag databases demonstrate the superiority of the DSMFH over state-of-the-art cross-modal hashing methods.
- Published
- 2021
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