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    Length: 14:44
04 May 2020

Augmenting data in image space (eg. flipping, cropping etc) and activation space (eg. dropout) are being widely used to regularise deep neural networks and have been successfully applied on several computer vision tasks. Unlike previous works, which are mostly focused on doing augmentation in the aforementioned domains, we propose to do augmentation in label space. In this paper, we present a simple, yet effective novel method to generate fixed dimensional labels with continuous values for images by exploiting the word2vec –semantic representations – of the existing categorical labels. We then append these representations to existing categorical labels and train the model. We validated our idea on two challenging face attribute classification data sets viz. CelebA and LFWA. Our extensive experiments show that the augmented labels improve the performance of the competitive deep learn- ing baseline and also attains the state-of-the-art performance

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