Adobe Inc.
FEW-SHOT DIGITAL IMAGE GENERATION USING GAN-TO-GAN TRANSLATION

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Abstract:

The present disclosure relates to systems, methods, and non-transitory computer readable media for accurately and efficiently modifying a generative adversarial neural network using few-shot adaptation to generate digital images corresponding to a target domain while maintaining diversity of a source domain and realism of the target domain. In particular, the disclosed systems utilize a generative adversarial neural network with parameters learned from a large source domain. The disclosed systems preserve relative similarities and differences between digital images in the source domain using a cross-domain distance consistency loss. In addition, the disclosed systems utilize an anchor-based strategy to encourage different levels or measures of realism over digital images generated from latent vectors in different regions of a latent space.

Status:
Application
Type:

Utility

Filling date:

29 Jan 2021

Issue date:

11 Aug 2022