Publication | Open Access
RARE: Image Reconstruction Using Deep Priors Learned Without Groundtruth
145
Citations
65
References
2020
Year
Image ReconstructionEngineeringMachine LearningLearned DenoisersImage DenoiserImage AnalysisData ScienceComputational ImagingImage HallucinationRadiologyHealth SciencesImage Reconstruction FrameworkMachine VisionReconstruction TechniqueMedical ImagingInverse ProblemsMedical Image ComputingDeep LearningComputer VisionBiomedical ImagingVideo DenoisingImage DenoisingImage Restoration
Regularization by denoising (RED) is an image reconstruction framework that uses an image denoiser as a prior. Recent work has shown the state-of-the-art performance of RED with learned denoisers corresponding to pre-trained convolutional neural nets (CNNs). In this work, we propose to broaden the current denoiser-centric view of RED by considering priors corresponding to networks trained for more general artifact-removal. The key benefit of the proposed family of algorithms, called regularization by artifact-removal (RARE), is that it can leverage priors learned on datasets containing only undersampled measurements. This makes RARE applicable to problems where it is practically impossible to have fully-sampled groundtruth data for training. We validate RARE on both simulated and experimentally collected data by reconstructing a free-breathing whole-body 3D MRIs into ten respiratory phases from heavily undersampled k-space measurements. Our results corroborate the potential of learning regularizers for iterative inversion directly on undersampled and noisy measurements.
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