Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Peer is Your Pillar: A Data-unbalanced Conditional GANs for Few-shot Image Generation

About

Few-shot image generation aims to train generative models using a small number of training images. When there are few images available for training (e.g. 10 images), Learning From Scratch (LFS) methods often generate images that closely resemble the training data while Transfer Learning (TL) methods try to improve performance by leveraging prior knowledge from GANs pre-trained on large-scale datasets. However, current TL methods may not allow for sufficient control over the degree of knowledge preservation from the source model, making them unsuitable for setups where the source and target domains are not closely related. To address this, we propose a novel pipeline called Peer is your Pillar (PIP), which combines a target few-shot dataset with a peer dataset to create a data-unbalanced conditional generation. Our approach includes a class embedding method that separates the class space from the latent space, and we use a direction loss based on pre-trained CLIP to improve image diversity. Experiments on various few-shot datasets demonstrate the advancement of the proposed PIP, especially reduces the training requirements of few-shot image generation.

Ziqiang Li, Chaoyue Wang, Xue Rui, Chao Xue, Jiaxu Leng, Bin Li• 2023

Related benchmarks

TaskDatasetResultRank
Few-shot Image GenerationSunglasses 10-shot
FID29.28
36
Few-shot Image GenerationSketches 10-shot
FID37.4
18
Showing 2 of 2 rows

Other info

Follow for update