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Sur, 2019 - Google Patents

Survey of deep learning and architectures for visual captioning—transitioning between media and natural languages

Sur, 2019

Document ID
4898690475830011722
Author
Sur C
Publication year
Publication venue
Multimedia Tools and Applications

External Links

Snippet

Abstract Deep Learning Architectures has been researched the most in this decade because of its capability to scale up and solve problems that couldn't be solved before. Mean while many NLP applications cropped up and there is a requirement to understand how the …
Continue reading at link.springer.com (other versions)

Classifications

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