Compressed channeled spectropolarimetry
Dennis J. Lee, Charles F. LaCasse, Julia M. Craven

TL;DR
This paper introduces a compressed sensing-based reconstruction method for channeled spectropolarimetry, improving noise robustness and resolution over traditional Fourier transform techniques.
Contribution
It presents a novel compressed sensing framework for reconstructing Stokes parameters, overcoming noise sensitivity and bandwidth limitations of existing methods.
Findings
Enhanced noise robustness in reconstructions
Higher resolution recovery matching sensor native resolution
Validated improvements through simulations and experiments
Abstract
Channeled spectropolarimetry measures the spectrally resolved Stokes parameters. A key aspect of this technique is to accurately reconstruct the Stokes parameters from a modulated measurement of the channeled spectropolarimeter. The state-of-the-art reconstruction algorithm uses the Fourier transform to extract the Stokes parameters from channels in the Fourier domain. While this approach is straightforward, it can be sensitive to noise and channel cross-talk, and it imposes bandwidth limitations that cut off high frequency details. To overcome these drawbacks, we present a reconstruction method called compressed channeled spectropolarimetry. In our proposed framework, reconstruction in channeled spectropolarimetry is an underdetermined problem, where we take N measurements and solve for 3N unknown Stokes parameters. We formulate an optimization problem by creating a mathematical model…
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