Image-To-Image Translation Networks for Estimating Evapotranspiration Variations: SAR2ET


Cetin S., Ulker B., Cinbis G., Erten E.

2024 IEEE International Geoscience and Remote Sensing Symposium, IGARSS 2024, Athens, Greece, 7 - 12 July 2024, pp.301-304, (Full Text) identifier

  • Publication Type: Conference Paper / Full Text
  • Doi Number: 10.1109/igarss53475.2024.10642364
  • City: Athens
  • Country: Greece
  • Page Numbers: pp.301-304
  • Keywords: deep learning, disaggregation, Evapotranspiration, Sentinel-1, weak supervision
  • Middle East Technical University Affiliated: Yes

Abstract

Evapotranspiration (ET) plays a significant role in understanding the water necessities of crops during their growing season, and hence, aids to make a decision in agriculture (planting time, applying fertilizer, irrigation, yield prediction and etc.). In this context, over the past few years, a wide range of research studies have been implemented for learning field-level ET from low-resolution ET products by downscaling and/or data fusion strategies. Unlike these previous studies, this research aims to leverage deep learning based models to learn ET from temporally and spatially dense imaging data; Sentinel-1 and climate data; ERA-5, both provided by Copernicus Climate Change Service. The model is formed by weak supervision from high spatial resolution Sentinel-1 coupled with climate data and analysis ready ET product as target. We evaluated the framework across two geographically distributed regions, namely; The Balkans and The Aegean in order to understand how well weak supervision estimates ET over croplands in different ecosystems.The code for the SAR2ET model is publicly available at https://github.com/Agcurate/SAR2ET, where you can access all the details regarding the model.