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Improved Masked Image Generation with Token-Critic

Authors :
Lezama, José
Chang, Huiwen
Jiang, Lu
Essa, Irfan
Publication Year :
2022

Abstract

Non-autoregressive generative transformers recently demonstrated impressive image generation performance, and orders of magnitude faster sampling than their autoregressive counterparts. However, optimal parallel sampling from the true joint distribution of visual tokens remains an open challenge. In this paper we introduce Token-Critic, an auxiliary model to guide the sampling of a non-autoregressive generative transformer. Given a masked-and-reconstructed real image, the Token-Critic model is trained to distinguish which visual tokens belong to the original image and which were sampled by the generative transformer. During non-autoregressive iterative sampling, Token-Critic is used to select which tokens to accept and which to reject and resample. Coupled with Token-Critic, a state-of-the-art generative transformer significantly improves its performance, and outperforms recent diffusion models and GANs in terms of the trade-off between generated image quality and diversity, in the challenging class-conditional ImageNet generation.<br />Comment: Accepted to ECCV 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2209.04439
Document Type :
Working Paper