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Soil salinity detection from satellite image analysis: an integrated approach of salinity indices and field data

机译:通过卫星图像分析检测土壤盐分:盐分指数和田间数据的综合方法

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摘要

This paper attempts to detect soil salinity from satellite image analysis using remote sensing and geographic information system. Salinity intrusion is a common problem for the coastal regions of the world. Traditional salinity detection techniques by field survey and sampling are time-consuming and expensive. Remote sensing and geographic information system offer economic and efficient salinity detection, monitoring, and mapping. To predict soil salinity, an integrated approach of salinity indices and field data was used to develop a multiple regression equation. The correlations between different indices and field data of soil salinity were calculated to find out the highly correlated indices. The best regression model was selected considering the high R-2 value, low P value, and low Akaike's Information Criterion. About 20 % variation was observed between the field data and predicted EC from the satellite image analysis. The precision of this salinity detection technique depends on the accuracy and uniform distribution of field data.
机译:本文尝试使用遥感和地理信息系统通过卫星图像分析来检测土壤盐分。盐度入侵是世界沿海地区的普遍问题。通过现场调查和采样的传统盐度检测技术既费时又昂贵。遥感和地理信息系统可提供经济有效的盐度检测,监测和制图。为了预测土壤盐分,使用盐分指数和田间数据的综合方法来开发多元回归方程。计算了不同指标与土壤盐分田间数据之间的相关性,以找出高度相关的指标。考虑到较高的R-2值,较低的P值和较低的Akaike信息准则,选择了最佳回归模型。实地数据和卫星图像分析预测的EC之间观察到大约20%的差异。这种盐度检测技术的精度取决于现场数据的精度和均匀分布。

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