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Image search / Artificial intelligence applications / Content-based image retrieval / Image retrieval / Relevance / Search engine indexing / Search engine / Recall / Semantic gap / Information science / Information retrieval / Science
Date: 2007-07-24 16:32:12
Image search
Artificial intelligence applications
Content-based image retrieval
Image retrieval
Relevance
Search engine indexing
Search engine
Recall
Semantic gap
Information science
Information retrieval
Science

COMPUTING PRACTICES From Pixels to Semantic

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