Litcius/Paper detail

F2GAN: Fusing-and-Filling GAN for Few-shot Image Generation

Yan Hong, Li Niu, Jianfu Zhang, Weijie Zhao, Chen Fu, Liqing Zhang

202089 citationsDOI

Abstract

In order to generate images for a given category, existing deep generative models generally rely on abundant training images. However, extensive data acquisition is expensive and fast learning ability from limited data is necessarily required in real-world applications. Also, these existing methods are not well-suited for fast adaptation to a new category. Few-shot image generation, aiming to generate images from only a few images for a new category, has attracted some research interest. In this paper, we propose a Fusing-and-Filling Generative Adversarial Network (F2GAN) to generate realistic and diverse images for a new category with only a few images. In our F2GAN, a fusion generator is designed to fuse the high-level features of conditional images with random interpolation coefficients, and then fills in attended low-level details with non-local attention module to produce a new image. Moreover, our discriminator can ensure the diversity of generated images by a mode seeking loss and an interpolation regression loss. Extensive experiments on five datasets demonstrate the effectiveness of our proposed method for few-shot image generation.

Topics & Concepts

DiscriminatorComputer scienceFuse (electrical)Artificial intelligenceInterpolation (computer graphics)Generator (circuit theory)Image (mathematics)Computer visionPattern recognition (psychology)Power (physics)PhysicsEngineeringTelecommunicationsDetectorElectrical engineeringQuantum mechanicsGenerative Adversarial Networks and Image SynthesisAdvanced Image Processing TechniquesImage Processing Techniques and Applications