2022
DOI: 10.48550/arxiv.2202.04327
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Anchor Graph Structure Fusion Hashing for Cross-Modal Similarity Search

Abstract: Cross-modal hashing has been widely applied to retrieve items across modalities due to its superiority in fast computation and low storage. However, some challenges are still needed to address: (1) most existing CMH methods take graphs, which are always predefined separately in each modality, as input to model data distribution. These methods omit to consider the correlation of graph structure among multiple modalities. Besides, cross-modal retrieval results highly rely on the quality of predefined affinity gr… Show more

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(1 citation statement)
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“…[36] constructs multi-view affinity and asymmetric graphs over anchor data which serve as a unified semantic hub in a semi-supervised manner. Anchor graph structure fusion hashing [40] incorporates intrinsic anchor fusion affinity preservation and clustering structure optimization into a unified framework. Asymmetric Transfer Hashing [41] characterizes the domain distribution gap by minimizing two asymmetric hash functions and learns an adaptive bipartite graph to characterize the similarity between cross-domain samples.…”
Section: B Anchor Graph-based Hashing Methodsmentioning
confidence: 99%
“…[36] constructs multi-view affinity and asymmetric graphs over anchor data which serve as a unified semantic hub in a semi-supervised manner. Anchor graph structure fusion hashing [40] incorporates intrinsic anchor fusion affinity preservation and clustering structure optimization into a unified framework. Asymmetric Transfer Hashing [41] characterizes the domain distribution gap by minimizing two asymmetric hash functions and learns an adaptive bipartite graph to characterize the similarity between cross-domain samples.…”
Section: B Anchor Graph-based Hashing Methodsmentioning
confidence: 99%