Imaging Spectrometer Optimal FITting
Project description
ISOFIT contains a set of routines and utilities for fitting surface, atmosphere and instrument models to imaging spectrometer data. It is written primarily in Python, with JSON format configuration files and some dependencies on widely-available numerical and scientific libraries such as scipy, numpy, and scikit-learn. It is designed for maximum flexibility, so that users can swap in and evaluate model components based on different radiative transfer models (RTMs) and various statistical descriptions of surface, instrument, and atmosphere. It can run on individual radiance spectra in text format, or imaging spectrometer data cubes.
Please check the documentation for installation and usage instructions and in depth information.
There are two main branches:
Information on how to cite the ISOFIT Python package can be found in the CITATION file.
License
Free software: Apache License v2
All images contained in any (sub-)directory of this repository are licensed under the CC0 license which can be found here.
Feature overview
utilities for fitting surface, atmosphere and instrument models to imaging spectrometer data
a selection of radiative transfer models (RTMs) incl. MODTRAN, LibRadTran, and 6S
sRTMnet emulator for MODTRAN 6 by coupling a neural network with a surrogate RTM (6S v2.1)
various statistical descriptions of surface, instrument, and atmosphere
application to both individual radiance spectra and imaging spectrometer data cubes
custom instrument models to handle new sensors
observation uncertanities to account for model discrepancy errors
prior distribution based on background knowledge of the state vector
Status
Project details
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