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Estimating soil organic matter content from Hyperion reflectance images using PLSR, PCR, MinR and SWR models in semi-arid regions of Iran

机译:使用PLSR,PCR,MINR和SWR模型在伊朗半干旱地区估算来自Hyperion反射图像的土壤有机质含量

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摘要

Soil organic matter is highly pivotal as it can improve physical, chemical and biological properties of soil through various functions. Direct measurement of soil organic matter at large scales requires a great number of soil samples which is time consuming, tedious and costly. Consequently, alternative methods must be developed to provide a rapid overview of soil organic matter with reasonable accuracy at large scales. Remote sensing can be considered as a non-destructive, rapid and inexpensive method for such purpose. Among different remote sensing features, hyperspectral spectroscopy may produce inexpensive, quick and accurate way of producing soil organic matter maps at large scales. This study aimed to assess the feasibility of providing accurate soil organic matter distribution maps for large semi-arid areas of Iran. Consequently, some Hyperion images were used to develop relationships between spectral bands and soil organic matter with several methods including Stepwise Regression (SWR), Minimum Regression (MinR), Partial Least Square Regression (PLSR) and Principle Component Regression (PCR) models. Models were first calibrated with Hyperion images of the Ivanekey region and then verified by using 9 random samples from the Ivanekey and 23 samples from the Uromia semi-arid regions. Results indicated that of the applied models, SWR and PLSR can provide reasonable accuracy (RMSE) to predict soil organic matter in entire semi-arid region. However, more investigations are needed to improve the accuracy of such predictive models for arid and semi-arid regions with relatively low organic matter content.
机译:土壤有机物高度枢转,因为它可以通过各种功能来改善土壤的物理,化学和生物学性质。大鳞片的土壤有机物质直接测量需要大量的土壤样品,这是耗时,繁琐且昂贵的。因此,必须开发替代方法,以便在大尺度上具有合理的精度来提供土壤有机质的快速概述。遥感可以被视为这种目的的非破坏性,快速和廉价的方法。在不同的遥感特征中,高光谱光谱可以在大尺度下产生廉价,快速准确地生产土壤有机物质图。本研究旨在评估为伊朗的大型半干旱地区提供准确的土壤有机物质分布图的可行性。因此,一些Hyperion图像用于利用诸如逐步回归(SWR),最小回归(MINR),部分最小二会回归(PLSR)和原理成分回归(PCR)模型的若干方法在光谱带和土壤有机物之间的关系。首先用IVANEKEY区域的Hyperion图像校准模型,然后通过使用来自伊凡育的9个随机样本和来自Uromia半干旱区域的23个样本进行验证。结果表明,应用模型,SWR和PLSR可以提供合理的精度(RMSE)来预测整个半干旱区域的土壤有机物。然而,需要更多的调查来提高具有相对较低的有机质含量的干旱和半干旱区域的预测模型的准确性。

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