Learning to Extract Distributed Polarization Sensing Data from Noisy Jones Matrices

18 Jan 2024  ·  Mohammad Farsi, Christian Häger, Magnus Karlsson, Erik Agrell ·

We consider the problem of recovering spatially resolved polarization information from receiver Jones matrices. We introduce a physics-based learning approach, improving noise resilience compared to previous inverse scattering methods, while highlighting challenges related to model overparameterization.

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