2021
DOI: 10.3390/rs13163100
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Soil Salinity Inversion in Coastal Corn Planting Areas by the Satellite-UAV-Ground Integration Approach

Abstract: Soil salinization is a significant factor affecting corn growth in coastal areas. How to use multi-source remote sensing data to achieve the target of rapid, efficient and accurate soil salinity monitoring in a large area is worth further study. In this research, using Kenli District of the Yellow River Delta as study area, the inversion of soil salinity in a corn planting area was carried out based on the integration of ground imaging hyperspectral, unmanned aerial vehicles (UAV) multispectral and Sentinel-2A… Show more

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Cited by 24 publications
(23 citation statements)
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“…Satellite-UAV-ground integration is a promising significant way to achieve high-precision land surface properties monitoring. The satellite-ground spectral fusion and satellite-UAV collaboration integration methods in this study have significantly improved the accuracy of soil salinity inversion results in cotton fields in coastal areas, compared to the methods of UAV-ground inversion and satellite-UAV collaboration integration and UAV-ground spectral fusion and model upscaling integration in previous studies (Qi et al, 2021;Qi et al, 2020). Compared with the integrated method of pixel true value upscaling, the method based on satellite-ground spectrum fusion and satellite-UAV collaboration integration introduces the fusion of ground imaging hyperspectral and satellite spectrum, which enriches the spectral information of satellites and improves the correlation between spectrum and soil salinity.…”
Section: Discussionmentioning
confidence: 80%
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“…Satellite-UAV-ground integration is a promising significant way to achieve high-precision land surface properties monitoring. The satellite-ground spectral fusion and satellite-UAV collaboration integration methods in this study have significantly improved the accuracy of soil salinity inversion results in cotton fields in coastal areas, compared to the methods of UAV-ground inversion and satellite-UAV collaboration integration and UAV-ground spectral fusion and model upscaling integration in previous studies (Qi et al, 2021;Qi et al, 2020). Compared with the integrated method of pixel true value upscaling, the method based on satellite-ground spectrum fusion and satellite-UAV collaboration integration introduces the fusion of ground imaging hyperspectral and satellite spectrum, which enriches the spectral information of satellites and improves the correlation between spectrum and soil salinity.…”
Section: Discussionmentioning
confidence: 80%
“…The closer R 2 is to 1, the smaller the RMSE and the larger the RPD, indicating that the higher the precision of model and the better the modeling effect. According to relevant grading standards (Qi et al, 2021), the degree of soil salinisation is divided into five grades: nonsalinization (<1g·kg −1 ), mild salinisation (1–2 gkg −1 ), moderate salinisation (2–4 gkg −1 ), severe salinisation (4–6 gkg −1 ), and saline soil (>6 gkg −1 ), and a distribution map of soil salinity in a cotton field is generated.…”
Section: Methodsmentioning
confidence: 99%
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“…The image scale conversion based on numerical regression has a simple principle and is easy to implement, but it lacks sufficient extrapolation ability and portability. Gao et al applied the Bayesian method [49], Pereira et al applied the geostatistical method [50], and Qi et al applied the TsHARP method [51] to achieve image scale conversion, respectively. Different methods have their advantages and disadvantages, and how to use other multi-platform remote sensing data to realize the collaborative inversion of CLQ is still worthy of further study.…”
Section: Discussionmentioning
confidence: 99%
“…The average ratio adjustment method is a common method for combining UAV and satellite images; it uses the reflectance ratio of corresponding bands with an approximate wavelength range between the UAV and satellite multispectral data to correct the satellite images [ 30 , 31 ]. For example, the average ratio adjustment method has been used to correct Sentinel-2A satellite images to invert SSC in the YRD [ 32 ]. However, wavelength range and the central wavelength generally diverge from the corresponding bands of UAV and satellite multispectral data.…”
Section: Introductionmentioning
confidence: 99%