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Mask-Guided Portrait Editing with Conditional GANs

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arxiv 1905.10346 v1 pith:E7GNSXNB submitted 2019-05-24 cs.CV

Mask-Guided Portrait Editing with Conditional GANs

classification cs.CV
keywords faceeditingportraitconditionalfacesframeworkgansgenerating
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Portrait editing is a popular subject in photo manipulation. The Generative Adversarial Network (GAN) advances the generating of realistic faces and allows more face editing. In this paper, we argue about three issues in existing techniques: diversity, quality, and controllability for portrait synthesis and editing. To address these issues, we propose a novel end-to-end learning framework that leverages conditional GANs guided by provided face masks for generating faces. The framework learns feature embeddings for every face component (e.g., mouth, hair, eye), separately, contributing to better correspondences for image translation, and local face editing. With the mask, our network is available to many applications, like face synthesis driven by mask, face Swap+ (including hair in swapping), and local manipulation. It can also boost the performance of face parsing a bit as an option of data augmentation.

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