StyleNAT: Giving Each Head a New Perspective

10 Nov 2022  ·  Steven Walton, Ali Hassani, Xingqian Xu, Zhangyang Wang, Humphrey Shi ·

Image generation has been a long sought-after but challenging task, and performing the generation task in an efficient manner is similarly difficult. Often researchers attempt to create a "one size fits all" generator, where there are few differences in the parameter space for drastically different datasets. Herein, we present a new transformer-based framework, dubbed StyleNAT, targeting high-quality image generation with superior efficiency and flexibility. At the core of our model, is a carefully designed framework that partitions attention heads to capture local and global information, which is achieved through using Neighborhood Attention (NA). With different heads able to pay attention to varying receptive fields, the model is able to better combine this information, and adapt, in a highly flexible manner, to the data at hand. StyleNAT attains a new SOTA FID score on FFHQ-256 with 2.046, beating prior arts with convolutional models such as StyleGAN-XL and transformers such as HIT and StyleSwin, and a new transformer SOTA on FFHQ-1024 with an FID score of 4.174. These results show a 6.4% improvement on FFHQ-256 scores when compared to StyleGAN-XL with a 28% reduction in the number of parameters and 56% improvement in sampling throughput. Code and models will be open-sourced at https://github.com/SHI-Labs/StyleNAT.

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Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Image Generation FFHQ 1024 x 1024 StyleNAT FID 4.17 # 12
Image Generation FFHQ 256 x 256 StyleNAT FID 2.05 # 2
Image Generation FFHQ 256 x 256 StyleNAT (DINOv2) FD 229.72 # 2
Precision 0.79 # 3
Recall 0.41 # 4
Image Generation LSUN Churches 256 x 256 StyleNAT FID 3.4 # 8

Methods