2021
DOI: 10.48550/arxiv.2112.10310
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Contrastive Attention Network with Dense Field Estimation for Face Completion

Abstract: Most modern face completion approaches adopt an autoencoder or its variants to restore missing regions in face images. Encoders are often utilized to learn powerful representations that play an important role in meeting the challenges of sophisticated learning tasks. Specifically, various kinds of masks are often presented in face images in the wild, forming complex patterns, especially in this hard period of COVID-19. It's difficult for encoders to capture such powerful representations under this complex situ… Show more

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