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Remote Sensing Techniques for Salt Affected Soil Mapping: Application to the Oran Region of Algeria

机译:盐受影响土壤测绘的遥感技术:阿尔及利亚奥兰地区的应用

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Satellite remote sensing of land affected by salinity, is a useful tool for decision support system through digital image processing for materials delineation (crystallography, detection of rocks, mineralogy, etc.). Today, with die advent of technology integration, merger, with optical data radar (InSAR and Signal Processing) actively contributed to the modelling of radar backscattering coefficient for the quantitative and qualitative salinity (modelled coefficients for models in relation to soil moisture, surface roughness). Thus, our approach has been to exploit the multi-spectral optical data from the LANDSAT ETM + (Enhanced Thematic Mapper) to map surface states, including indices of salinity and sodicity as: (BI: Brightness Index), NDSI: Normalized Difference Salinity Index, SI: Salinity Index, ASI: Aster Salinity Index (Agriculture), Index of Salinity (using GIS Geographic Information System and remote sensing), and finally the SSSI "Soil Salinity and Sodicity Index". These indicators of salinity were tested for the Oran region in accordance with the spectral sensor ALI (Advanced Land Imager) satellite EO-1 (NASA from 2002 to 2006). Remote sensing helps identify salts are highly reflective and improved mapping of saline soil surface. Reports of More frequently used is the combined near infrared and visible (4/1 ETM), or bands in the infrared (7 / 4 or 7 / 5 ETM). Consequently, the spectral curves of the satellite ALI EO-1 show a match for saline soils and two test plots were chosen (Aquifer of Es-Senia) to study corresponding with the measured data in-situ (electrical conductivity and pH) for the classification of saline soils [2]. The confusions that arise between the effects of salt stress and water stress are removed followed by seasonal applying the Geo-statistical analysis with the Geo-modelling approach in GIS techniques investigation and monitoring the variation of the electrical conductivity in the alluvial aquifer of Es-Senia for the salt affected soil and segmentation accuracy model.
机译:卫星遥感受盐度影响的土地,是通过数字图像处理的决策支持系统的有用工具,用于材料描绘(晶体,岩石,矿物学等)。如今,通过技术集成的模具出现,合并,利用光学数据雷达(INSAR和信号处理)积极促进雷达反向散射系数的建模,用于定量和定性盐度(与土壤水分,表面粗糙度相关的模型建模系数) 。因此,我们的方法一直在利用来自Landsat ETM +(增强专题映射器)的多光谱光学数据来映射表面状态,包括盐度和素质的指标,如:(BI:亮度指数),NDSI:归一化差异盐度指数,Si:盐度指数,ASI:Aster Salinity指数(农业),盐度指数(使用GIS地理信息系统和遥感),最后SSSI“土壤盐度和钠度指数”。根据光谱传感器Ali(先进地图成像仪)卫星EO-1(NASA从2002年至2006年的NASA)测试了这些盐度的这些指标。遥感有助于识别盐具有高反射性和改善盐土壤表面的映射。更常用的报告是近红外和可见(4/1 ETM)或红外线(7/4或7/5 ETM)的带。因此,卫星Ali EO-1的光谱曲线显示出盐渍土的匹配和两个测试图(ES-Senia的含水层),以研究与原位的测量数据(电导率和pH)相对应进行分类盐渍土[2]。除去盐胁迫和水胁迫的影响之间产生的混淆,然后通过GIS技术的地理建模方法应用地理统计分析,监测ES-Senia的冲积含水层中的导电性的变化用于盐影响土壤和分割精度模型。

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