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Demonstration
EVA: Engine for Visual Annotation
Jia Deng · Joanathan Krause · Zhiheng Huang · Alexander C Berg · Li Fei-Fei
Tue Dec 04 07:00 PM -- 11:59 PM (PST) @ Harrah's Special Events Center, 2nd Floor -Tahoe A & B
The EVA system, powered by ImageNet, recognizes over 20K visual classes. Using the DARTS algorithm (Deng et al. 2012), EVA is able to name objects in an image as informatively as possible while ensuring an arbitrarily high accuracy. This live demo showcases EVA on images supplied by a user.
Author Information
Jia Deng (Google)
Joanathan Krause (Stanford University)
Zhiheng Huang (Stanford University)
Alexander C Berg (Stony Brook)
Li Fei-Fei (Stanford University)
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