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A partial least square regression method to quantitatively retrieve soil salinity using hyper-spectral reflectance data

机译:利用高光谱反射率数据定量检索土壤盐分的偏最小二乘回归方法

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Hetao Irrigation District located in Inner Mongolia, is one of the three largest irrigated area in China. In the irrigational agriculture region, for the reasons that many efforts have been put on irrigation rather than on drainage, as a result much sedimentary salt that usually is solved in water has been deposited in surface soil. So there has arisen a problem in such irrigation district that soil salinity has become a chief fact which causes land degrading. Remote sensing technology is an efficiency way to map the salinity in regional scale. In the principle of remote sensing, soil spectrum is one of the most important indications which can be used to reflect the status of soil salinity. In the past decades, many efforts have been made to reveal the spectrum characteristics of the salinized soil, such as the traditional statistic regression method. But it also has been found that when the hyper-spectral reflectance data are considered, the traditional regression method can't be treat the large dimension data, because the hyper-spectral data usually have too higher spectral band number. In this paper, a partial least squares regression (PLSR) model was established based on the statistical analysis on the soil salinity and the reflectance of hyper-spectral. Dataset were collect through the field soil samples were collected in the region of Hetao irrigation from the end of July to the beginning of August. The independent validation using data which are not included in the calibration model reveals that the proposed model can predicate the main soil components such as the content of total ions(S%), PH with higher determination coefficients(R2) of 0.728 and 0.715 respectively. And the rate of prediction to deviation(RPD) of the above predicted value are larger than 1.6, which indicates that the calibrated PLSR model can be used as a tool to retrieve soil salinity with accurate results. When the PLSR model's regression coefficients were aggregated according to the wavelength of visual (blue, green, red) and near infrared bands of LandSat Thematic Mapper(TM) sensor, some significant response values were observed, which indicates that the proposed method in this paper can be used to analysis the remotely sensed data from the space-boarded platform.
机译:内蒙古河套灌区是中国三大灌区之一。在灌溉农业地区,由于许多努力是灌溉而不是排水,因此许多通常在水中溶解的沉积盐沉积在表层土壤中。因此在这种灌溉区中出现了一个问题,即土壤盐分已经成为导致土地退化的主要事实。遥感技术是一种在区域范围内绘制盐度的有效方法。在遥感原理中,土壤光谱是最重要的指示之一,可以用来反映土壤盐分的状况。在过去的几十年中,人们进行了许多努力来揭示盐渍化土壤的光谱特征,例如传统的统计回归方法。但是还发现,考虑到高光谱反射率数据,传统的回归方法无法处理大尺寸数据,因为高光谱数据通常具有太高的光谱带数。基于对土壤盐分和高光谱反射率的统计分析,建立了偏最小二乘回归模型。通过田间收集数据集,从7月底到8月初在河套灌区采集土壤样品。使用未包含在校准模型中的数据进行的独立验证表明,该模型可以预测主要土壤成分,例如总离子含量(S%),PH值,分别具有较高的测定系数(R2)0.728和0.715。上述预测值的预测偏差率(RPD)大于1.6,表明该标定的PLSR模型可以作为土壤盐分反演的准确结果的工具。当根据LandSat Thematic Mapper(TM)传感器的可见波长(蓝色,绿色,红色)和近红外波段汇总PLSR模型的回归系数时,观察到一些显着的响应值,这表明本文提出的方法可以用来分析来自太空平台的遥感数据。

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