Equivariant Neural Networks for Indirect Measurements
Matthias Beckmann, Nick Heilenk\"otter

TL;DR
This paper introduces equivariant neural networks designed to operate directly on indirect measurements in inverse problems, leveraging symmetry properties to improve efficiency and accuracy over traditional reconstruction-based methods.
Contribution
The authors develop a theoretical framework for group-equivariant neural networks tailored to inverse problems, extending Lie group equivariance to measurement operators and enabling direct measurement-based tasks.
Findings
Effective in sparse data scenarios
Outperforms classical reconstruction methods
Theoretically grounded in group representation analysis
Abstract
In recent years, deep learning techniques have shown great success in various tasks related to inverse problems, where a target quantity of interest can only be observed through indirect measurements by a forward operator. Common approaches apply deep neural networks in a post-processing step to the reconstructions obtained by classical reconstruction methods. However, the latter methods can be computationally expensive and introduce artifacts that are not present in the measured data and, in turn, can deteriorate the performance on the given task. To overcome these limitations, we propose a class of equivariant neural networks that can be directly applied to the measurements to solve the desired task. To this end, we build appropriate network structures by developing layers that are equivariant with respect to data transformations induced by well-known symmetries in the domain of the…
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Taxonomy
TopicsNeural Networks and Applications
