首页> 外文期刊>Geoderma: An International Journal of Soil Science >Using legacy data for correction of soil surface clay content predicted from VNIR/SWIR hyperspectral airborne images
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Using legacy data for correction of soil surface clay content predicted from VNIR/SWIR hyperspectral airborne images

机译:使用遗留数据校正从VNIR / SWIR高光谱机载图像预测的土壤表层粘土含量

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Visible, near-infrared and short-wave infrared (VNIR/SWIR, 0.4-2.5 mu m) hyperspectral airborne imaging has been demonstrated to be a potential tool for topsoil property mapping (such as free iron, clay, and organic matter) over bare soils of large areas. Nevertheless, one of the limiting factors of hyperspectral airborne data use for soil property mapping is the need for a set of soil spectra extracted from bare soils pixels of the VNIR/SWIR airborne data and the corresponding soil property values measured over soil samples collected over the bare soils pixels for which soil spectra are extracted. We propose to test a new approach which uses legacy soil data collected over and/or around the study site, instead of soil property values measured over soil samples collected over bare soils pixels. As legacy soil samples can be inaccurately localized or can be located out of bare soils of hyperspectral airborne data or out of the study area, these data could be unusable as calibration data for classical predictive models (such as the partial least-squares regression method). So the proposed approach first uses a spectral clay index to estimate clay contents (in relative values as it is done without calibration) and then transform these estimated clay contents thanks to a correction of the distribution and range of clay content estimations using legacy soil data. This procedure is compared to a linear model built from the spectral clay index and calibrated using a reference database. The spectral index was proposed by Levin et al. (2007) using spectral bands at 2205, 2.13, 2.224 mu m. This study employs the VNIR/SWIR AISA-DUAL hyperspectral airborne data acquired over an area of 300 km(2) in a Mediterranean region. Our results show that 1) this spectral index offers predictions with low accuracy in terms of the coefficient of determination, R-2, which is associated with high bias and SEP; 2) the distribution and range correction made using legacy soil data allows for both an increase of accuracy (R-2) and an improvement of bias and SEP; 3) it is better to have a small number of legacy ground measurements focused on the study area than a high number of legacy ground measurements dispersed on and far from the study area; 4) the correction of the prediction bias is highly dependent on the legacy soil data quality; and 5) regardless of which legacy soil database is used, the soil pattern is discriminated. With the coming availability of the next generation of hyperspectral VNIR/SWIR satellite data for the entire globe, this study may open a new way toward accessible and cheap methods for the delivery of soil property maps to the geoscience community. (C) 2016 Elsevier B.V. All rights reserved.
机译:可见,近红外和短波红外(VNIR / SWIR,0.4-2.5μm)高光谱机载成像是裸露表土特性映射(例如游离铁,粘土和有机物)的潜在工具大面积土壤。然而,用于土壤性质制图的高光谱空气传播数据的限制因素之一是需要从VNIR / SWIR空气传播数据的裸露土壤像素中提取的一组土壤光谱,以及从土壤中采集的土壤样品中测得的相应土壤性质值提取土壤光谱的裸土像素。我们建议测试一种新方法,该方法使用在研究地点上方和/或周围收集的遗留土壤数据,而不是在裸土像素上收集的土壤样品上测量的土壤属性值。由于遗留土壤样品的定位可能不准确,或者可能位于高光谱机载数据的裸露土壤之外或研究区域之外,因此这些数据可能无法用作经典预测模型(例如偏最小二乘回归方法)的校准数据。因此,所提出的方法首先使用光谱粘土指数来估计粘土含量(在没有校准的情况下以相对值表示),然后通过使用遗留土壤数据对粘土含量估计值的分布和范围进行校正来转换这些估计的粘土含量。将该程序与根据光谱粘土指数建立并使用参考数据库进行校准的线性模型进行比较。光谱指数由Levin等人提出。 (2007年)使用2205、2.13、2.224微米的光谱带。这项研究采用了在地中海地区300 km(2)范围内获取的VNIR / SWIR AISA-DUAL高光谱机载数据。我们的结果表明:1)该光谱指数的测定系数R-2与高偏差和SEP有关,因此预测精度较低。 2)使用遗留土壤数据进行的分布和范围校正既可以提高精度(R-2),又可以改善偏差和SEP; 3)最好将少量的遗留地面测量结果集中在研究区域上,而不是将大量的遗留地面测量结果分散在研究区域上或远离研究区域; 4)预测偏差的校正高度依赖于传统土壤数据质量; 5)不管使用哪个遗留土壤数据库,都可以区分土壤模式。随着全球范围内下一代高光谱VNIR / SWIR卫星数据的到来,这项研究可能为向地球科学界提供土壤特性图的简便,廉价方法开辟了一条新途径。 (C)2016 Elsevier B.V.保留所有权利。

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