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IRNeXt: Rethinking Convolutional Network Design for Image Restoration
{Alois Knoll Xiaochun Cao Sining Yang Wenqi Ren Yuning Cui}
Abstract
We present IRNeXt, a simple yet effective convolutional network architecture for image restoration. Recently, Transformer models have dominated the field of image restoration due to the powerful ability of modeling long-range pixels interactions. In this paper, we excavate the potential of the convolutional neural network (CNN) and show that our CNN-based model can receive comparable or better performance than Transformer models with low computation overhead on several image restoration tasks. By re-examining the characteristics possessed by advanced image restoration algorithms, we discover several key factors leading to the performance improvement of restoration models. This motivates us to develop a novel network for image restoration based on cheap convolution operators. Comprehensive experiments demonstrate that IRNeXt delivers state-of-the-art performance among numerous datasets on a range of image restoration tasks with low computational complexity, including image dehazing, single-image defocus/motion deblurring, image deraining, and image desnowing.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| deblurring-on-rsblur | IRNext | Average PSNR: 34.08 |
| image-deblurring-on-gopro | IRNeXt | PSNR: 33.16 SSIM: 0.962 |
| image-dehazing-on-sots-indoor | IRNeXt | PSNR: 41.21 SSIM: 0.996 |
| image-dehazing-on-sots-outdoor | IRNeXt | PSNR: 39.18 SSIM: 0.996 |
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