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Flexible Cross-Modal Hashing
2020
IEEE Transactions on Neural Networks and Learning Systems
Hashing has been widely adopted for large-scale data retrieval in many domains due to its low storage cost and high retrieval speed. Existing cross-modal hashing methods optimistically assume that the correspondence between training samples across modalities is readily available. This assumption is unrealistic in practical applications. In addition, existing methods generally require the same number of samples across different modalities, which restricts their flexibility. We propose a flexible
doi:10.1109/tnnls.2020.3027729
pmid:33052870
fatcat:g56qbjvomzeaxc4jyegrh2j3cu