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Generative Face Completion

About

In this paper, we propose an effective face completion algorithm using a deep generative model. Different from well-studied background completion, the face completion task is more challenging as it often requires to generate semantically new pixels for the missing key components (e.g., eyes and mouths) that contain large appearance variations. Unlike existing nonparametric algorithms that search for patches to synthesize, our algorithm directly generates contents for missing regions based on a neural network. The model is trained with a combination of a reconstruction loss, two adversarial losses and a semantic parsing loss, which ensures pixel faithfulness and local-global contents consistency. With extensive experimental results, we demonstrate qualitatively and quantitatively that our model is able to deal with a large area of missing pixels in arbitrary shapes and generate realistic face completion results.

Yijun Li, Sifei Liu, Jimei Yang, Ming-Hsuan Yang• 2017

Related benchmarks

TaskDatasetResultRank
Face RestorationWebFace (test)
PSNR25.65
55
Face CompletionVggFace2 (test)
PSNR25.05
8
Image CompletionUser Study Regular Mask
Voting Percentage0.24
5
Image CompletionUser Study Irregular Mask
Voting Percentage0.16
5
Image CompletionUser Study Real Image
Voting Percentage0.0048
5
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