Extra data to accompany code in GitHub burntfields_punjab, both used in Walker et. al. 2022, Detecting crop burning in India using satellite data
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https://zenodo.org/record/10987986
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Supplementary data files to accompany GitHub code 'burntfields_punjab' supporting Walker et. al. (2022) Detecting crop burning in India using satellite data [available here] and Jack et. al. (2024) Money (not) to burn: Payments for ecosystem services to reduce crop residue burning).
Includes custom Sentinel-2 cloud masks and data from Sentinel-2 Spectral Mixture Analysis to highlight Char (burning) based on general concept and methods from Daldegan et. al (2019). Spectral mixture analysis in Google Earth Engine to model and delineate fire scars over a large extent and a long time-series in a rainforest-savanna transition zone. Remote Sensing of Environment 232, 111340.
Note: Bands in weekly BASMA layers are: 0 = green vegetation, 1 = Non-productive vegetation and bare soil, 2 = Char (burned).
further details are provided at: https://github.com/klwalker-sb/burntfields_punjab (archived at: DOI: 10.5281/zenodo.11225292)
创建时间:
2024-05-20



