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Hyperspectral Remote Sensing for Detecting Soil Salinization Using ProSpecTIR-VS Aerial Imagery and Sensor Simulation

机译:利用ProSpecTIR-VS航空影像和传感器仿真检测土壤盐渍化的高光谱遥感

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Soil salinization due to irrigation affects agricultural productivity in the semi-arid region of Brazil. In this study, the performance of four computational models to estimate electrical conductivity (EC) (soil salinization) was evaluated using laboratory reflectance spectroscopy. To investigate the influence of bandwidth and band positioning on the EC estimates, we simulated the spectral resolution of two hyperspectral sensors (airborne ProSpecTIR-VS and orbital Hyperspectral Infrared Imager (HyspIRI)) and three multispectral instruments (RapidEye/REIS, High Resolution Geometric (HRG)/SPOT-5, and Operational Land Imager (OLI)/Landsat-8)). Principal component analysis (PCA) and the first-order derivative analysis were applied to the data to generate metrics associated with soil brightness and spectral features, respectively. The three sets of data (reflectance, PCA, and derivative) were tested as input variable for Extreme Learning Machine (ELM), Ordinary Least Square regression (OLS), Partial Least Squares Regression (PLSR), and Multilayer Perceptron (MLP). Finally, the laboratory models were inverted to a ProSpecTIR-VS image (400–2500 nm) acquired with 1-m spatial resolution in the northeast of Brazil. The objective was to estimate EC over exposed soils detected using the Normalized Difference Vegetation Index (NDVI). The results showed that the predictive ability of the linear models and ELM was better than that of the MLP, as indicated by higher values of the coefficient of determination (R 2 ) and ratio of the performance to deviation (RPD), and lower values of the root mean square error (RMSE). Metrics associated with soil brightness (reflectance and PCA scores) were more efficient in detecting changes in the EC produced by soil salinization than metrics related to spectral features (derivative). When applied to the image, the PLSR model with reflectance had an RMSE of 1.22 dS·m ?1 and an RPD of 2.21, and was more suitable for detecting salinization (10–20 dS·m ?1 ) in exposed soils (NDVI < 0.30) than the other models. For all computational models, lower values of RMSE and higher values of RPD were observed for the narrowband-simulated sensors compared to the broadband-simulated instruments. The soil EC estimates improved from the RapidEye to the HRG and OLI spectral resolutions, showing the importance of shortwave intervals (SWIR-1 and SWIR-2) in detecting soil salinization when the reflectance of selected bands is used in data modelling.
机译:灌溉造成的土壤盐碱化影响了巴西半干旱地区的农业生产力。在这项研究中,使用实验室反射光谱法评估了四种计算模型的电导率(EC)(土壤盐渍化)估算性能。为了研究带宽和频带定位对EC估计的影响,我们模拟了两个高光谱传感器(机载ProSpecTIR-VS和轨道高光谱红外成像仪(HyspIRI))和三种多光谱仪器(RapidEye / REIS,高分辨率几何( HRG)/ SPOT-5,以及可操作的陆地成像仪(OLI)/ Landsat-8))。将主成分分析(PCA)和一阶导数分析应用于数据,以分别生成与土壤亮度和光谱特征相关的度量。测试了三组数据(反射率,PCA和导数)作为极限学习机(ELM),普通最小二乘回归(OLS),偏最小二乘回归(PLSR)和多层感知器(MLP)的输入变量。最后,在巴西东北部,将实验室模型反转为以1 m空间分辨率获取的ProSpecTIR-VS图像(400–2500 nm)。目的是评估使用归一化植被指数(NDVI)检测到的裸露土壤的EC。结果表明,线性模型和ELM的预测能力比MLP更好,这表明确定系数(R 2)和性能与偏差之比(RPD)较高,而MDL较低。均方根误差(RMSE)。与土壤亮度相关的指标(反射率和PCA分数)比与光谱特征相关的指标(导数)更有效地检测土壤盐渍化产生的EC变化。当应用于图像时,具有反射率的PLSR模型的RMSE为1.22 dS·m?1,RPD为2.21,更适合于检测裸露土壤中的盐碱化(10–20 dS·m?1)(NDVI < 0.30)。对于所有计算模型,与宽带模拟仪器相比,窄带模拟传感器的RMSE值较低,RPD较高。土壤EC估计值从RapidEye改善到HRG和OLI光谱分辨率,显示了当将选定波段的反射率用于数据建模时,短波间隔(SWIR-1和SWIR-2)在检测土壤盐渍化中的重要性。

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