Deep Learning Techniques for Inverse Problems in Imaging
- URL: http://arxiv.org/abs/2005.06001v1
- Date: Tue, 12 May 2020 18:35:55 GMT
- Title: Deep Learning Techniques for Inverse Problems in Imaging
- Authors: Gregory Ongie, Ajil Jalal, Christopher A. Metzler, Richard G.
Baraniuk, Alexandros G. Dimakis, Rebecca Willett
- Abstract summary: Recent work in machine learning shows that deep neural networks can be used to solve a wide variety of inverse problems.
We present a taxonomy that can be used to categorize different problems and reconstruction methods.
- Score: 102.30524824234264
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent work in machine learning shows that deep neural networks can be used
to solve a wide variety of inverse problems arising in computational imaging.
We explore the central prevailing themes of this emerging area and present a
taxonomy that can be used to categorize different problems and reconstruction
methods. Our taxonomy is organized along two central axes: (1) whether or not a
forward model is known and to what extent it is used in training and testing,
and (2) whether or not the learning is supervised or unsupervised, i.e.,
whether or not the training relies on access to matched ground truth image and
measurement pairs. We also discuss the trade-offs associated with these
different reconstruction approaches, caveats and common failure modes, plus
open problems and avenues for future work.
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