Using Augmented Face Images to Improve Facial Recognition Tasks

05/13/2022
by   Shuo Cheng, et al.
6

We present a framework that uses GAN-augmented images to complement certain specific attributes, usually underrepresented, for machine learning model training. This allows us to improve inference quality over those attributes for the facial recognition tasks.

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