articleInverse ProblemsOct 24, 2017GREEN OA

Solving ill-posed inverse problems using iterative deep neural networks

JAJonas AdlerOzan Öktem

Elekta (Sweden) · KTH Royal Institute of Technology

Indexed inarxivcrossref

Abstract

We propose a partially learned approach for the solution of ill posed inverse problems with not necessarily linear forward operators. The method builds on ideas from classical regularization theory and recent advances in deep learning to perform learning while making use of prior information about the inverse problem encoded in the forward operator, noise model and a regularizing functional. The method results in a gradient-like iterative scheme, where the "gradient" component is learned using a convolutional network that includes the gradients of the data discrepancy and regularizer as input in each iteration. We present results of such a partially learned gradient scheme on a non-linear tomographic inversion…

Citation impact

510
total citations
FWCI
46.22
Percentile
100%
References
24
Citations per year

Authors

2
  • JA
    Jonas Adler

    Elekta (Sweden), KTH Royal Institute of Technology

  • Ozan ÖktemCorresponding

    KTH Royal Institute of Technology

Topics & keywords

Keywords
  • Inverse problem
  • Regularization (linguistics)
  • Iterative reconstruction
  • Iterative method
  • Convolutional neural network
  • Inversion (geology)
  • Deep learning
  • Imaging phantom
No related works found for this paper.