End-to-End Localization and Ranking for Relative Attributes

9 Aug 2016Krishna Kumar SinghYong Jae Lee

We propose an end-to-end deep convolutional network to simultaneously localize and rank relative visual attributes, given only weakly-supervised pairwise image comparisons. Unlike previous methods, our network jointly learns the attribute's features, localization, and ranker... (read more)

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