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Im, Jungho
Intelligent Remote sensing and geospatial Information Science Lab.
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ASCAT2SMAP: Image-to-Image Translation to Obtain L-Band-Like Soil Moisture From C-Band Satellite Data

Author(s)
Lee, JaeseJung, SihunIm, Jungho
Issued Date
2024-07
DOI
10.1109/JSTARS.2024.3435853
URI
https://scholarworks.unist.ac.kr/handle/201301/83919
Citation
IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, v.17, pp.14862 - 14873
Abstract
Soil moisture (SM) is a critical parameter in understanding the Earth's hydrological cycle and managing water resources. Remote sensing instruments, such as Advanced SCATterometer (ASCAT), can provide valuable long-term SM. However, compatibility issues may arise when integrating ASCAT SM retrieval with another retrieval, such as soil moisture active passive (SMAP), a high-quality microwave radiometer-based SM retrieval. In this study, we propose a novel image-to-image translation approach based on the U-Net architecture to convert ASCAT SM data into the format of SMAP (ASCAT2SMAP). The resulting SM from the ASCAT2SMAP was evaluated using temporally separated SMAP data and independent in-situ SM measurement from the International Soil Moisture Network (ISMN). In the separately divided test periods, ASCAT2SMAP showed good agreement with SMAP with R of 928, ubRMSD of 0.043 $\text{m}<^>{3}/\text{m}<^>{3}$, and bias of 0.002 $\text{m}<^>{3}/\text{m}<^>{3}$. When evaluating ASCAT2SMAP with ISMN data, it showed a better agreement than ASCAT and more similar metrics with SMAP. Moreover, we found that the ASCAT2SMAP is more robust to a problem of subsurface scattering than the original ASCAT SM. When simulating V-polarized brightness temperature from ASCAT2SMAP SM, it showed good agreement with ubRMSD of 5.602 K and bias of -0.135 K. Our results are expected to provide a valuable perspective preceding to creation of harmonized SM datasets from different sensors, contributing to improved data integration and analysis in the field of geoscience and remote sensing.
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
ISSN
1939-1404
Keyword (Author)
Artificial neural networksSoil moistureSpatial resolutionSoil measurementsAdvanced SCATterometer (ASCAT)image-to-image translationsoil moisture active passive (SMAP)soil moisture (SM)u-netSatellite broadcastingVegetation mappingSensors
Keyword
MODELSMAPFORESTMICROWAVE EMISSIONPRODUCT VALIDATION

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