chenxwh / hart

Efficient Visual Generation with Hybrid Autoregressive Transformer

  • Public
  • 110 runs
  • GitHub
  • Paper
  • License

HART: Efficient Visual Generation with Hybrid Autoregressive Transformer

teaser_Page1

Abstract

We introduce Hybrid Autoregressive Transformer (HART), an autoregressive (AR) visual generation model capable of directly generating 1024x1024 images, rivaling diffusion models in image generation quality. Existing AR models face limitations due to the poor image reconstruction quality of their discrete tokenizers and the prohibitive training costs associated with generating 1024px images. To address these challenges, we present the hybrid tokenizer, which decomposes the continuous latents from the autoencoder into two components: discrete tokens representing the big picture and continuous tokens representing the residual components that cannot be represented by the discrete tokens. The discrete component is modeled by a scalable-resolution discrete AR model, while the continuous component is learned with a lightweight residual diffusion module with only 37M parameters. Compared with the discrete-only VAR tokenizer, our hybrid approach improves reconstruction FID from 2.11 to 0.30 on MJHQ-30K, leading to a 31% generation FID improvement from 7.85 to 5.38. HART also outperforms state-of-the-art diffusion models in both FID and CLIP score, with 4.5-7.7x higher throughput and 6.9-13.4x lower MACs.

Acknowledgements

Our codebase is inspired by amazing open source research projects such as VAR and MAR. The authors would like to thank Tianhong Li from MIT, Lijun Yu from Google DeepMind, Kaiwen Zha from MIT and Yunhao Fang from UCSD for helpful discussions; and Paul Palei, Mike Hobbs, Chris Hill, Michel Erb from MIT for setting up the online demo and maintaining the server.

Citation

@article{tang2024hart,
  title={HART: Efficient Visual Generation with Hybrid Autoregressive Transformer},
  author={Tang, Haotian and Wu, Yecheng and Yang, Shang and Xie, Enze and Chen, Junsong and Chen, Junyu and Zhang, Zhuoyang and Cai, Han and Lu, Yao and Han, Song},
  journal={arXiv preprint},
  year={2024}
}