Articles | Volume 12, issue 4
https://doi.org/10.5194/amt-12-2567-2019
https://doi.org/10.5194/amt-12-2567-2019
Research article
 | 
02 May 2019
Research article |  | 02 May 2019

Neural network radiative transfer for imaging spectroscopy

Brian D. Bue, David R. Thompson, Shubhankar Deshpande, Michael Eastwood, Robert O. Green, Vijay Natraj, Terry Mullen, and Mario Parente

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Cited articles

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Imaging spectrometers provide valuable remote measurements of Earth's surface and atmosphere. These measurements rely on computationally expensive radiative transfer models (RTMs). Spectrometers produce too much data to process with RTMs directly, requiring approximations that trade accuracy for speed. We demonstrate that neural networks can quickly emulate RTM calculations more accurately than current approaches, enabling the application of more sophisticated RTMs than current methods permit.
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