Task adapted reconstruction for inverse problems
Publication Date
2022Journal Title
Inverse Problems
ISSN
0266-5611
Publisher
IOP Publishing
Volume
38
Issue
7
Language
en
Type
Article
This Version
VoR
Metadata
Show full item recordCitation
Adler, J., Lunz, S., Verdier, O., Schönlieb, C., & Öktem, O. (2022). Task adapted reconstruction for inverse problems. Inverse Problems, 38 (7) https://doi.org/10.1088/1361-6420/ac28ec
Abstract
The paper considers the problem of performing a task defined on a model
parameter that is only observed indirectly through noisy data in an ill-posed
inverse problem. A key aspect is to formalize the steps of reconstruction and
task as appropriate estimators (non-randomized decision rules) in statistical
estimation problems. The implementation makes use of (deep) neural networks to
provide a differentiable parametrization of the family of estimators for both
steps. These networks are combined and jointly trained against suitable
supervised training data in order to minimize a joint differentiable loss
function, resulting in an end-to-end task adapted reconstruction method. The
suggested framework is generic, yet adaptable, with a plug-and-play structure
for adjusting both the inverse problem and the task at hand. More precisely,
the data model (forward operator and statistical model of the noise) associated
with the inverse problem is exchangeable, e.g., by using neural network
architecture given by a learned iterative method. Furthermore, any task that is
encodable as a trainable neural network can be used. The approach is
demonstrated on joint tomographic image reconstruction, classification and
joint tomographic image reconstruction segmentation.
Keywords
inverse problems, image reconstruction, tomography, deep learning, feature reconstruction, segmentation, classification
Sponsorship
Engineering and Physical Sciences Research Council (EP/M00483X/1)
Engineering and Physical Sciences Research Council (EP/N014588/1)
Identifiers
ipac28ec, ac28ec, ip-103037.r1
External DOI: https://doi.org/10.1088/1361-6420/ac28ec
This record's URL: https://www.repository.cam.ac.uk/handle/1810/337746
Rights
Licence:
https://creativecommons.org/licenses/by/4.0/
Statistics
Total file downloads (since January 2020). For more information on metrics see the
IRUS guide.
Recommended or similar items
The current recommendation prototype on the Apollo Repository will be turned off on 03 February 2023. Although the pilot has been fruitful for both parties, the service provider IKVA is focusing on horizon scanning products and so the recommender service can no longer be supported. We recognise the importance of recommender services in supporting research discovery and are evaluating offerings from other service providers. If you would like to offer feedback on this decision please contact us on: support@repository.cam.ac.uk