GNAH transfers semantic structure from vision-language models into compact binary codes using prototype-anchored global alignment and contrastive stochastic neighborhood alignment for data-efficient unsupervised cross-modal hashing.
When clip meets cross-modal hashing retrieval: A new strong baseline,
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Unsupervised Data-Efficient Cross-Modal Retrieval with Global-Neighborhood Alignment Hashing
GNAH transfers semantic structure from vision-language models into compact binary codes using prototype-anchored global alignment and contrastive stochastic neighborhood alignment for data-efficient unsupervised cross-modal hashing.