Moobeen Son’s scientific contributions

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Publications (3)


Fig. 2 Level-3 land cover of the study area in 2020
Wavelengths, bandwidths, and spatial resolutions of the Sentinel-2A (ESA, 2021)
A Comparative Analysis of Vegetation and Agricultural Monitoring of Terra MODIS and Sentinel-2 NDVIs
  • Article
  • Full-text available

November 2021

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329 Reads

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2 Citations

Journal of The Korean Society of Agricultural Engineers

Moobeen Son

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The purpose of this study is to evaluate the compatibility of the vegetation index between the two satellites and the applicability of agricultural monitoring by comparing and verifying NDVI (Normalized Difference Vegetation Index) based on Sentinel-2 and Terra MODIS (Moderate Resolution Imaging Spectroradiometer). Terra MODIS NDVI utilized 16-day MOD13Q1 data with 250 m spatial resolution, and Sentinel-2 NDVI utilized 10-day Level-2A BOA (Bottom Of Atmosphere) data with 10 m spatial resolution. To compare both NDVI, Sentinel-2 NDVIs were reproduced at 16-day intervals using the MVC (Maximum Value Composite) technique. As a result of time series NDVIs based on two satellites for 2019 and compare by land cover, the average R2 (Coefficient of determination) and RMSE (Root Mean Square Error) of the entire land cover were 0.86 and 0.11, which indicates that Sentinel-2 NDVI and MODIS NDVI had a high correlation. MODIS NDVI is overestimated than Sentinel-2 NDVI for all land cover due to coarse spatial resolution. The high-resolution Sentinel-2 NDVI was found to reflect the characteristics of each land cover better than the MODIS NDVI because it has a higher discrimination ability for subdivided land cover and land cover with a small area range.

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Estimation of soil moisture using Sentinel-1 SAR images and multiple linear regression model considering antecedent precipitations

June 2021

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337 Reads

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5 Citations

Korean Journal of Remote Sensing

This study is to estimate soil moisture (SM) using Sentinel-1A/B C-band SAR (synthetic aperture radar) images and Multiple Linear Regression Model(MLRM) in the Yongdam-Dam watershed of South Korea. Both the Sentinel-1A and -1B images (6 days interval and 10 m resolution) were collected for 5 years from 2015 to 2019. The geometric, radiometric, and noise corrections were performed using the SNAP (SentiNel Application Platform) software and converted to backscattering coefficient of VV and VH polarization. The in-situ SM data measured at 6 locations using TDR were used to validate the estimated SM results. The 5 days antecedent precipitation data were also collected to overcome the estimation difficulty for the vegetated area not reaching the ground. The MLRM modeling was performed using yearly data and seasonal data set, and correlation analysis was performed according to the number of the independent variable. The estimated SM was verified with observed SM using the coefficient of determination (R2) and the root mean square error (RMSE). As a result of SM modeling using only BSC in the grass area, R2 was 0.13 and RMSE was 4.83%. When 5 days of antecedent precipitation data was used, R2 was 0.37 and RMSE was 4.11%. With the use of dry days and seasonal regression equation to reflect the decrease pattern and seasonal variability of SM, the correlation increased significantly with R2 of 0.69 and RMSE of 2.88%.


Estimation of soil moisture using Sentinel-1 SAR Images and multiple linear regression model considering antecedent precipitations

June 2021

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76 Reads

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2 Citations

This study is to estimate soil moisture (SM) using Sentinel-1A/B C-band SAR (synthetic aperture radar) images and Multiple Linear Regression Model(MLRM) in the Yongdam-Dam watershed of South Korea. Both the Sentinel-1A and -1B images (6 days interval and 10 m resolution) were collected for 5 years from 2015 to 2019. The geometric, radiometric, and noise corrections were performed using the SNAP (SentiNel Application Platform) software and converted to backscattering coefficient of VV and VH polarization. The in-situ SM data measured at 6 locations using TDR were used to validate the estimated SM results. The 5 days antecedent precipitation data were also collected to overcome the estimation difficulty for the vegetated area not reaching the ground. The MLRM modeling was performed using yearly data and seasonal data set, and correlation analysis was performed according to the number of the independent variable. The estimated SM was verified with observed SM using the coefficient of determination (R²) and the root mean square error (RMSE). As a result of SM modeling using only BSC in the grass area, R² was 0.13 and RMSE was 4.83%. When 5 days of antecedent precipitation data was used, R² was 0.37 and RMSE was 4.11%. With the use of dry days and seasonal regression equation to reflect the decrease pattern and seasonal variability of SM, the correlation increased significantly with R² of 0.69 and RMSE of 2.88%.

Citations (3)


... Normalized Difference Vegetation Index (NDVI) is the most common vegetation index used globally to represent vegetation health and coverage (Lee et al., 2021;Taddeo et al., 2021;Grover and Singh 2015;Huang et al., 2020). In Landsat satellite image, Near-Infrared (NIR) band (band 4) and the Red bands were used for the NDVI calculation. ...

Reference:

Urban Sprawl On Microclimate In The Ga East Municipality Of Ghana
A Comparative Analysis of Vegetation and Agricultural Monitoring of Terra MODIS and Sentinel-2 NDVIs

Journal of The Korean Society of Agricultural Engineers

... MLR obtains a weighted summation relationship between each feature and the predicted values. The problems to be dealt with in practical work are usually complex multiple features, and thus compared with the univariate linear regression method, MLR is more suitable for use in practical work (Chung et al., 2021). ...

Estimation of soil moisture using Sentinel-1 SAR Images and multiple linear regression model considering antecedent precipitations

... 최근 다양한 인공위성영상을 활용한 수자원 관리 분야 적용 연구가 활발한 가운데, 합성개구레이더(synthetic aperture radar, SAR) 위성 영상을 이용한 지표면의 토양수분량 산정 연구가 국내에서 다수 진 행되어 왔다 (Lee et al., 2017;Kim et al., 2019;Cho et al., 2020;Chung et al., 2020;Chung et al., 2021;Choi and Cho, 2022;Lee et al., 2022;Lee et al., 2023b). 가용한 여러 SAR 자료 중 특히 유럽 우주국(European Sentinel-1 SAR 위성영상을 이용한 토양수분량의 산정은 주로 전 처리된 레이더 영상의후방산란계수(backscattering coefficient, σ 0 ) 와 토양수분 간의 통계적인 관계를 이용하며, SAR 센서의 편파 (polarization)에 따른 분석, 입사각(incidence angle) 보정 Cho et al., 2021), 토양수분 외 수리특성 및 식생 등의 지면요소 를 고려한 모형 적용 Cho et al., 2021;Chung et al., 2023) 등 다양한 연구가 이루어져 왔으며 최근에는 인공지능 알고 리즘을 도입한 사례도 소개되고 있다 (Chung et al., 2022;Jeong et al., 2022 관측소의 일부구역 (Fig. 4) Fig. 5. Time-series plots of backscattering coefficient and incidence angle for Jucheon. ...

Estimation of soil moisture using Sentinel-1 SAR images and multiple linear regression model considering antecedent precipitations

Korean Journal of Remote Sensing