Arid
DOI10.3390/drones6090257
A Framework for Soil Salinity Monitoring in Coastal Wetland Reclamation Areas Based on Combined Unmanned Aerial Vehicle (UAV) Data and Satellite Data
Xie, Lijian; Feng, Xiuli; Zhang, Chi; Dong, Yuyi; Huang, Junjie; Cheng, Junkai
通讯作者Feng, XL
来源期刊DRONES
EISSN2504-446X
出版年2022
卷号6期号:9
英文摘要Soil salinization is one of the most important causes of land degradation and desertification, often threatening land management and sustainable agricultural development. Due to the low resolution of satellites, fine mapping of soil salinity cannot be completed, while high-resolution images from UAVs can only achieve accurate mapping of soil salinity in a small area. Therefore, how to realize fine mapping of salinity on a large scale based on UAV and satellite data is an urgent problem to be solved. Therefore, in this paper, the most relevant spectral variables for soil salinity were firstly determined using Pearson correlation analysis, and then the optimal inversion model was established based on the screened variables. Secondly, the feasibility of correcting satellite data based on UAV data was determined using Pearson correlation analysis and spectral variation trends, and the correction of satellite data was completed using least squares-based polynomial curve fitting for both UAV data and satellite data. Finally, the reflectance received from the vegetated area did not directly reflect the surface reflectance condition, so we used the support vector machine classification method to divide the study area into two categories: bare land and vegetated area, and built a model based on the classification results to realize the advantages of complementing the accurate spectral information of UAV and large-scale satellite spectral data in the study areas. By comparing the modeling inversion results using only satellite data with the inversion results based on optimized satellite data, our method framework could effectively improve the accuracy of soil salinity inversion in large satellite areas by 6-19%. Our method can meet the needs of large-scale accurate mapping, and can provide the necessary means and reference for soil condition monitoring.
英文关键词sentinel-2A unmanned aerial vehicles soil salinity classification inversion
类型Article
语种英语
开放获取类型gold
收录类别SCI-E
WOS记录号WOS:000856310600001
WOS关键词INDEX ; CAPABILITY ; VEGETATION ; XINJIANG ; NETWORK ; REGION ; IMAGES ; CHINA
WOS类目Remote Sensing
WOS研究方向Remote Sensing
资源类型期刊论文
条目标识符http://119.78.100.177/qdio/handle/2XILL650/392259
推荐引用方式
GB/T 7714
Xie, Lijian,Feng, Xiuli,Zhang, Chi,et al. A Framework for Soil Salinity Monitoring in Coastal Wetland Reclamation Areas Based on Combined Unmanned Aerial Vehicle (UAV) Data and Satellite Data[J],2022,6(9).
APA Xie, Lijian,Feng, Xiuli,Zhang, Chi,Dong, Yuyi,Huang, Junjie,&Cheng, Junkai.(2022).A Framework for Soil Salinity Monitoring in Coastal Wetland Reclamation Areas Based on Combined Unmanned Aerial Vehicle (UAV) Data and Satellite Data.DRONES,6(9).
MLA Xie, Lijian,et al."A Framework for Soil Salinity Monitoring in Coastal Wetland Reclamation Areas Based on Combined Unmanned Aerial Vehicle (UAV) Data and Satellite Data".DRONES 6.9(2022).
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