CVAILGJul 1, 2021

Global Filter Networks for Image Classification

arXiv:2107.00645v2682 citationsHas Code
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This addresses efficiency and scalability issues for high-resolution image classification, offering an alternative to transformers and CNNs, though it is incremental as it builds on existing frequency-domain methods.

The authors tackled the quadratic complexity scaling of self-attention and MLP models in vision by proposing the Global Filter Network (GFNet), which learns long-term spatial dependencies in the frequency domain with log-linear complexity, achieving competitive accuracy on ImageNet and downstream tasks.

Recent advances in self-attention and pure multi-layer perceptrons (MLP) models for vision have shown great potential in achieving promising performance with fewer inductive biases. These models are generally based on learning interaction among spatial locations from raw data. The complexity of self-attention and MLP grows quadratically as the image size increases, which makes these models hard to scale up when high-resolution features are required. In this paper, we present the Global Filter Network (GFNet), a conceptually simple yet computationally efficient architecture, that learns long-term spatial dependencies in the frequency domain with log-linear complexity. Our architecture replaces the self-attention layer in vision transformers with three key operations: a 2D discrete Fourier transform, an element-wise multiplication between frequency-domain features and learnable global filters, and a 2D inverse Fourier transform. We exhibit favorable accuracy/complexity trade-offs of our models on both ImageNet and downstream tasks. Our results demonstrate that GFNet can be a very competitive alternative to transformer-style models and CNNs in efficiency, generalization ability and robustness. Code is available at https://github.com/raoyongming/GFNet

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