Artificial intelligence for maximizing content based image by Zongmin Ma

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By Zongmin Ma

The expanding pattern of multimedia facts use is probably going to speed up growing an pressing want of supplying a transparent technique of shooting, storing, indexing, retrieving, examining, and summarizing info via snapshot facts.

Artificial Intelligence for Maximizing content material established picture Retrieval discusses significant elements of content-based photograph retrieval (CBIR) utilizing present applied sciences and purposes in the synthetic intelligence (AI) box. delivering state of the art study from top foreign specialists, this ebook deals a theoretical point of view and functional ideas for academicians, researchers, and practitioners.

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