Gradient-Based Learning of Discrete Structured Measurement Operators for Signal Recovery

Publication date

2022-11-10

Authors

Sauder, Jonathan
Genzel, MartinISNI 000000049306677X
Jung, Peter

Editors

Advisors

Supervisors

Document Type

/dk/atira/pure/researchoutput/researchoutputtypes/workingpaper/preprint
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License

cc_by

Abstract

Countless signal processing applications include the reconstruction of signals from few indirect linear measurements. The design of effective measurement operators is typically constrained by the underlying hardware and physics, posing a challenging and often even discrete optimization task. While the potential of gradient-based learning via the unrolling of iterative recovery algorithms has been demonstrated, it has remained unclear how to leverage this technique when the set of admissible measurement operators is structured and discrete. We tackle this problem by combining unrolled optimization with Gumbel reparametrizations, which enable the computation of low-variance gradient estimates of categorical random variables. Our approach is formalized by GLODISMO (Gradient-based Learning of DIscrete Structured Measurement Operators). This novel method is easy-to-implement, computationally efficient, and extendable due to its compatibility with automatic differentiation. We empirically demonstrate the performance and flexibility of GLODISMO in several prototypical signal recovery applications, verifying that the learned measurement matrices outperform conventional designs based on randomization as well as discrete optimization baselines.

Keywords

cs.LG, eess.SP

Citation

Sauder, J, Genzel, M & Jung, P 2022 'Gradient-Based Learning of Discrete Structured Measurement Operators for Signal Recovery' arXiv, pp. 1-18. https://doi.org/10.48550/arXiv.2202.03391