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Learning Visual Generative Priors without Text

Authors :
Ma, Shuailei
Zheng, Kecheng
Wei, Ying
Wu, Wei
Lu, Fan
Zhang, Yifei
Xie, Chen-Wei
Gong, Biao
Zhu, Jiapeng
Shen, Yujun
Publication Year :
2024

Abstract

Although text-to-image (T2I) models have recently thrived as visual generative priors, their reliance on high-quality text-image pairs makes scaling up expensive. We argue that grasping the cross-modality alignment is not a necessity for a sound visual generative prior, whose focus should be on texture modeling. Such a philosophy inspires us to study image-to-image (I2I) generation, where models can learn from in-the-wild images in a self-supervised manner. We first develop a pure vision-based training framework, Lumos, and confirm the feasibility and the scalability of learning I2I models. We then find that, as an upstream task of T2I, our I2I model serves as a more foundational visual prior and achieves on-par or better performance than existing T2I models using only 1/10 text-image pairs for fine-tuning. We further demonstrate the superiority of I2I priors over T2I priors on some text-irrelevant visual generative tasks, like image-to-3D and image-to-video. Our project page is available at https://xiaomabufei.github.io/lumos.<br />Comment: Project Page: https://xiaomabufei.github.io/lumos

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2412.07767
Document Type :
Working Paper