Publication | Open Access
SGD-Net: Efficient Model-Based Deep Learning With Theoretical Guarantees
32
Citations
70
References
2021
Year
Geometric LearningConvolutional Neural NetworkEngineeringMachine LearningIntensity Diffraction TomographyAutoencodersImage AnalysisData ScienceSparse Neural NetworkSingle-image Super-resolutionComputational ImagingTheoretical GuaranteesRadiologyHealth SciencesDeep UnfoldingMedical ImagingInverse ProblemsComputer ScienceMedical Image ComputingDeep LearningModel CompressionBiomedical ImagingDeep Unfolding Networks
Deep unfolding networks have recently gained popularity for solving imaging inverse problems. However, the computational and memory complexity of data-consistency layers within traditional deep unfolding networks scales with the number of measurements, limiting their applicability to large-scale imaging inverse problems. We propose SGD-Net as a new methodology for improving the efficiency of deep unfolding through stochastic approximations of the data-consistency layers. Our theoretical analysis shows that SGD-Net can be trained to approximate batch deep unfolding networks to an arbitrary precision. Our simulations on intensity diffraction tomography and sparse-view computed tomography show that SGD-Net can match the performance of the traditional batch network at a fraction of training and testing complexity.
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