https://doi.org/10.7490/f1000research.1115681.1
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Rosenfeld A, Solbach MD and Tsotsos JK. Totally-Looks-Like: A dataset and benchmark of semantic image similarity [version 1; not peer reviewed]. F1000Research 2018, 7:902 (poster) (https://doi.org/10.7490/f1000research.1115681.1)
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Totally-Looks-Like: A dataset and benchmark of semantic image similarity

Amir Rosenfeld1, Markus D. Solbach, John K. Tsotsos
Author Affiliations
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Published 25 Jun 2018

Totally-Looks-Like: A dataset and benchmark of semantic image similarity

[version 1; not peer reviewed]

Amir Rosenfeld1, Markus D. Solbach, John K. Tsotsos
Author Affiliations
1 York University, Toronto, Canada
Presented at
18th Vision Sciences Society Annual Meeting 2018
Abstract
Competing Interests

No competing interests were disclosed

Keywords
Perceptual similarity; convolutional neural networks; image similarity
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