ImageSpirit
Humans describe images in terms of nouns and adjectives while algorithms operate on images represented as sets of pixels. Bridging this gap between how humans would like to access images versus their typical representation is the goal of image parsing, which involves assigning object and attribute l...
Asıl Yazarlar: | Cheng, M-M, Zheng, S, Lin, W-Y, Vineet, V, Sturgess, P, Crook, N, Mitra, NJ, Torr, P |
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Materyal Türü: | Journal article |
Dil: | English |
Baskı/Yayın Bilgisi: |
Association for Computing Machinery
2014
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