Augmenting face attribute labels with word2vec embeddings improves deep classifier performance on CelebA and LFWA and reaches comparable accuracy with 50% less labeled data.
Large-scale machine learning with stochastic gradient descent
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AugLabel: Exploiting Word Representations to Augment Labels for Face Attribute Classification
Augmenting face attribute labels with word2vec embeddings improves deep classifier performance on CelebA and LFWA and reaches comparable accuracy with 50% less labeled data.