Publication | Open Access
Learning to solve inverse problems using Wasserstein loss
25
Citations
23
References
2017
Year
Image ReconstructionEngineeringMachine LearningOptimal Transport LossOptimal TransportSmeared ReconstructionImage AnalysisSignal ReconstructionRegularization (Mathematics)RadiologyHealth SciencesReconstruction TechniqueMedical ImagingLoss FunctionLarge Scale OptimizationInverse ProblemsMedical Image ComputingBiomedical ImagingImage RestorationWasserstein Loss
We propose using the Wasserstein loss for training in inverse problems. In particular, we consider a learned primal-dual reconstruction scheme for ill-posed inverse problems using the Wasserstein distance as loss function in the learning. This is motivated by miss-alignments in training data, which when using standard mean squared error loss could severely degrade reconstruction quality. We prove that training with the Wasserstein loss gives a reconstruction operator that correctly compensates for miss-alignments in certain cases, whereas training with the mean squared error gives a smeared reconstruction. Moreover, we demonstrate these effects by training a reconstruction algorithm using both mean squared error and optimal transport loss for a problem in computerized tomography.
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