Non-adversarial image generation using transfer learning
Assignee
Adobe Inc.
Inventors
Puneet Mangla, Balaji Krishnamurthy
Abstract
In implementations of systems for non-adversarial image generation using transfer learning, a computing device implements a generation system to receive input data describing random noise. The generation system generates a latent representation in a latent space of a machine learning model based on the random noise using a transformer model that is trained to generate latent representations in the latent space. A digital image is generated using the machine learning model based on the latent representation that depicts an object that is visually similar to objects depicted in digital images of a training dataset used to train the machine learning model based on a perceptual loss.
CPC Classifications
Filing Date
2023-01-17
Application No.
18097856
Claims
20