English

Autoregressive Image Generation using Residual Quantization

Computer Vision and Pattern Recognition 2022-03-10 v2 Machine Learning

Abstract

For autoregressive (AR) modeling of high-resolution images, vector quantization (VQ) represents an image as a sequence of discrete codes. A short sequence length is important for an AR model to reduce its computational costs to consider long-range interactions of codes. However, we postulate that previous VQ cannot shorten the code sequence and generate high-fidelity images together in terms of the rate-distortion trade-off. In this study, we propose the two-stage framework, which consists of Residual-Quantized VAE (RQ-VAE) and RQ-Transformer, to effectively generate high-resolution images. Given a fixed codebook size, RQ-VAE can precisely approximate a feature map of an image and represent the image as a stacked map of discrete codes. Then, RQ-Transformer learns to predict the quantized feature vector at the next position by predicting the next stack of codes. Thanks to the precise approximation of RQ-VAE, we can represent a 256×\times256 image as 8×\times8 resolution of the feature map, and RQ-Transformer can efficiently reduce the computational costs. Consequently, our framework outperforms the existing AR models on various benchmarks of unconditional and conditional image generation. Our approach also has a significantly faster sampling speed than previous AR models to generate high-quality images.

Keywords

Cite

@article{arxiv.2203.01941,
  title  = {Autoregressive Image Generation using Residual Quantization},
  author = {Doyup Lee and Chiheon Kim and Saehoon Kim and Minsu Cho and Wook-Shin Han},
  journal= {arXiv preprint arXiv:2203.01941},
  year   = {2022}
}

Comments

30 pages, 24 figures, accepted by CVPR 2022, the code is available at https://github.com/kakaobrain/rq-vae-transformer