Publication | Closed Access
NETT regularization for compressed sensing photoacoustic tomography
27
Citations
22
References
2019
Year
Image ReconstructionEngineeringMachine LearningMedical ImagingDeep LearningReconstruction TechniqueNett RegularizationBiomedical ImagingSignal ReconstructionImage DenoisingInverse ProblemsImage RestorationMedical Image ComputingDeep Learning MethodsRadiologyHealth Sciences
We discuss several methods for image reconstruction in compressed sensing photoacoustic tomography (CS-PAT). In particular, we apply the deep learning method of [H. Li, J. Schwab, S. Antholzer, and M. Haltmeier. NETT: Solving Inverse Problems with Deep Neural Networks (2018), arXiv:1803.00092], which is based on a learned regularizer, for the first time to the CS-PAT problem. We propose a network architecture and training strategy for the NETT that we expect to be useful for other inverse problems as well. All algorithms are compared and evaluated on simulated data, and validated using experimental data for two different types of phantoms. The results one the hand indicate great potential of deep learning methods, and on the other hand show that significant future work is required to improve their performance on real-word data.
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