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Robust Equivariant Imaging: a fully unsupervised framework for learning to image from noisy and partial measurements

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Deep networks provide state-of-the-art performance in multiple imaging inverse problems ranging from medical imaging to computational photography. However, most existing networks are trained with clean signals which are often hard or impossible to obtain. Equivariant imaging (EI) is a recent self-supervised learning framework that exploits the group invariance present in signal distributions to learn a reconstruction function from partial measurement data alone. While EI results are impressive, its performance degrades with increasing noise. In this paper, we propose a Robust Equivariant Imaging (REI) framework which can learn to image from noisy partial measurements alone. The proposed method uses Stein's Unbiased Risk Estimator (SURE) to obtain a fully unsupervised training loss that is robust to noise. We show that REI leads to considerable performance gains on linear and nonlinear inverse problems, thereby paving the way for robust unsupervised imaging with deep networks. Code is available at: https://github.com/edongdongchen/REI.

Dongdong Chen, Juli\'an Tachella, Mike E. Davies• 2021

Related benchmarks

TaskDatasetResultRank
MRI ReconstructionfastMRI 4X acceleration (test)
PSNR31
32
Image InpaintingUrban100 (test)
PSNR22
15
Multi-Coil MRI ReconstructionfastMRI Brain multi-coil 4x acceleration
SSIM68.3
13
Multi-Coil MRI ReconstructionfastMRI Brain 8x acceleration multi-coil
SSIM0.715
13
Multi-Coil MRI ReconstructionCMRxRecon Cardiac T1 T2 Mapping 4x acceleration multi-coil
SSIM73.6
13
Multi-Coil MRI ReconstructionCMRxRecon Cardiac T1/T2 Mapping multi-coil 8x acceleration
SSIM71.6
13
MRI ReconstructionCMRxRecon 2023
Time (ms)19
12
InpaintingDIV2K (test)
PSNR29.53
11
Sparse-View CT ReconstructionCT100 (test)
PSNR34
5
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