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首页> 外文期刊>Soil Science Society of America Journal >Potential of SPOT Multispectral Satellite Images for Mapping Topsoil Organic Carbon Content over Peri-Urban Croplands
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Potential of SPOT Multispectral Satellite Images for Mapping Topsoil Organic Carbon Content over Peri-Urban Croplands

机译:利用SPOT多光谱卫星图像绘制近郊农田表层土壤有机碳含量的潜力

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摘要

This study aims at identifying the potential of SPOT satellite images for predicting the topsoil soil organic carbon (SOC) content of bare cultivated soils over a large peri-urban area (221 km(2)) with both contrasted soils and SOC contents. Predictions were made from either field reflectance spectra, SPOT-simulated field reflectance spectra, or atmospherically corrected multispectral SPOT 2.5- and 20-m images. Field reflectance spectra were related to topsoil SOC contents by means of either partial least squares regression (PLSR) or multiple linear regression (MLR). Regression robustness was evaluated through a series of 1000 bootstrap data sets of calibration-validation samples generated among a total of 128 sampled sites. For satellite images, SOC contents were estimated from MLR bootstrap modeling on a smaller sample of pixels (similar to 30) that were bare soils at the time of acquisition. Field-based models obtained from SPOT-simulated spectra of regional sample sets composed of varied soils resulted in median validation root-mean-square errors (RMSE) of similar to 4.6to 4.9 g kg(-1), while image-based models resulted in median validation RMSE of 4.8 g kg(-1) but higher bias range and uncertainty. Postvalidation of SOC maps through an additional set of bare pixels led to RMSE values of similar to 4.6 to 6.0 g kg(-1). Although the resulting maps of SOC contents cannot deliver as accurate predictions as field spectra, they may enable prediction of rough classes of SOC contents with accuracies up to 60 to 70% when derived from image models, in possible agreement with the need to spatially monitor SOC classes over regional territories.
机译:这项研究旨在确定SPOT卫星图像的潜力,以预测大范围的郊区地区(221 km(2))上裸露的耕作土壤的表层土壤有机碳(SOC)含量,同时对比土壤和SOC含量。根据场反射光谱,SPOT模拟的场反射光谱或大气校正的多光谱SPOT 2.5和20-m图像进行预测。场反射光谱通过偏最小二乘回归(PLSR)或多元线性回归(MLR)与表土SOC含量相关。通过在总共128个采样点之间生成的一系列1000个校准验证样本的自举数据集来评估回归健壮性。对于卫星图像,SOC含量是根据MLR引导程序模型在较小的像素样本(类似于30)上估算的,这些像素在采集时是裸露的土壤。从由不同土壤组成的区域样本集的SPOT模拟光谱中获得的基于现场的模型导致中位数验证均方根误差(RMSE)接近4.6至4.9 g kg(-1),而基于图像的模型得出中位数验证RMSE为4.8 g kg(-1),但偏差范围和不确定性更高。通过额外的一组裸像素对SOC映射进行后验证会导致RMSE值接近4.6至6.0 g kg(-1)。尽管所得到的SOC含量图无法提供像田间光谱一样准确的预测,但是当从图像模型中得出时,它们可以预测精度高达60%到70%的SOC含量的粗略分类,这可能与空间监测SOC的需求相一致区域领土上的课程。

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