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Papers/Improved Transformer for High-Resolution GANs

Improved Transformer for High-Resolution GANs

Long Zhao, Zizhao Zhang, Ting Chen, Dimitris N. Metaxas, Han Zhang

2021-06-14NeurIPS 2021 12Vocal Bursts Intensity PredictionImage Generation
PaperPDFCode(official)

Abstract

Attention-based models, exemplified by the Transformer, can effectively model long range dependency, but suffer from the quadratic complexity of self-attention operation, making them difficult to be adopted for high-resolution image generation based on Generative Adversarial Networks (GANs). In this paper, we introduce two key ingredients to Transformer to address this challenge. First, in low-resolution stages of the generative process, standard global self-attention is replaced with the proposed multi-axis blocked self-attention which allows efficient mixing of local and global attention. Second, in high-resolution stages, we drop self-attention while only keeping multi-layer perceptrons reminiscent of the implicit neural function. To further improve the performance, we introduce an additional self-modulation component based on cross-attention. The resulting model, denoted as HiT, has a nearly linear computational complexity with respect to the image size and thus directly scales to synthesizing high definition images. We show in the experiments that the proposed HiT achieves state-of-the-art FID scores of 30.83 and 2.95 on unconditional ImageNet $128 \times 128$ and FFHQ $256 \times 256$, respectively, with a reasonable throughput. We believe the proposed HiT is an important milestone for generators in GANs which are completely free of convolutions. Our code is made publicly available at https://github.com/google-research/hit-gan

Results

TaskDatasetMetricValueModel
Image GenerationFFHQFID6.37HiT-B
Image GenerationFFHQ 256 x 256FID2.58HiT-L
Image GenerationFFHQ 256 x 256FID2.95HiT-B
Image GenerationFFHQ 256 x 256FID3.06HiT-S
Image GenerationCelebA-HQ 1024x1024FID8.83HiT-B
Image GenerationCelebA 256x256FID3.39HiT-B
Image GenerationFFHQ 1024 x 1024FID6.37HiT-B
Image GenerationImageNet 128x128FID30.83HiT

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