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Learning Disentangled Prompts for Compositional Image Synthesis

Authors :
Sohn, Kihyuk
Shaw, Albert
Hao, Yuan
Zhang, Han
Polania, Luisa
Chang, Huiwen
Jiang, Lu
Essa, Irfan
Publication Year :
2023

Abstract

We study domain-adaptive image synthesis, the problem of teaching pretrained image generative models a new style or concept from as few as one image to synthesize novel images, to better understand the compositional image synthesis. We present a framework that leverages a pretrained class-conditional generation model and visual prompt tuning. Specifically, we propose a novel source class distilled visual prompt that learns disentangled prompts of semantic (e.g., class) and domain (e.g., style) from a few images. Learned domain prompt is then used to synthesize images of any classes in the style of target domain. We conduct studies on various target domains with the number of images ranging from one to a few to many, and show qualitative results which show the compositional generalization of our method. Moreover, we show that our method can help improve zero-shot domain adaptation classification accuracy.<br />Comment: tech report

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.00763
Document Type :
Working Paper