March 28, 2025
Conference Paper

Data-Driven Invertible Neural Surrogates of Atmospheric Transmission

Abstract

We present Data-Driven Invertible Neural Surrogates of Atmospheric transmission, or DINSAT. DINSAT is a novel framework for inferring an atmospheric transmission profile from a spectral scene. This framework leverages a lightweight, physics-based simulator that is automatically tuned -- by virtue of autodifferentiation and differentiable programming -- to construct a surrogate atmospheric profile to model the observed data. The framework has utility in (i) performing atmospheric correction, (ii) recasting spectral data between various modalities (e.g. radiance and reflectance at the surface and at the sensor), and (iii) inferring atmospheric transmission profiles, such as absorbing bands and their relative magnitudes. We demonstrate the utility of these methods by performing a canonical atmospheric correction task for the purposes of further analysis - in this case, target detection within a scene.

Published: March 28, 2025

Citation

Koch J.V., B.M. Forland, B.E. Bernacki, T.J. Doster, and T.H. Emerson. 2024. Data-Driven Invertible Neural Surrogates of Atmospheric Transmission. In IEEE International Geoscience and Remote Sensing Symposium (IGARSS 2024), July 7-12, 2024, Athens, Greece, 6943-6947. Piscataway, New Jersey:IEEE. PNNL-SA-193712. doi:10.1109/IGARSS53475.2024.10642124