首页> 外文期刊>Geoderma: An International Journal of Soil Science >Degraded land detection by soil particle composition derived from multispectral remote sensing data in the Otindag Sandy Lands of China
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Degraded land detection by soil particle composition derived from multispectral remote sensing data in the Otindag Sandy Lands of China

机译:中国Otindag沙地多光谱遥感数据的土壤颗粒组成退化土地探测。

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Remote sensing technology has shown considerable potential for the estimation of soil properties. In this paper, we proposed a method by using the measured hyperspectral and BJ-1 multispectral image to estimate the silt content in soil quantitatively, and to develop a soil-based model which could be used in detecting desertification or land degradation. The test site was located in the Otindag Sandy Lands in Xilingol League, Inner Mongolia, China. Soil sampling was carried out to analyze the soil particle composition, and the spectral properties of soil samples were also examined in the laboratory. The differences in soil particle composition between the degraded lands and others were distinguished statistically, and the correlation of soil particle contents with spectral reflectance was analyzed based on the Partial least Squares Regression (PLSR) to determine the sensitive band needed to calibrate the prediction model. The validity of the models was assessed by using the Prediction Residual Error Sum of Squares (PRESS). The results showed that silt content was an important factor to indicate land degradation, and it descended gradually with the development of land degradation. There was significant difference in silt content between degraded lands and the others, the silt content in undegraded lands was nearly three times greater than that in degraded lands. R-2 of PLSR model based on the BJ-1 multispectral image (R-2 = 0.504) was lower than that of the measured spectral model (R-2 = 0.725), and validated PRESS (PRESS = 0.753) was also higher than that based on the measured spectra (PRESS = 0.562). However, the BJ-1 multispectral image did show a considerable ability to predict the soil silt content Compared with the normal regression method, PLSR was not only effective in dependent or independent variable selection, but it was also reliable to determine the regression model with higher stability and lower error. By combining statistics and manually interactive adjustment, the thresholds of silt contents for categorizing different degraded lands were determined as 3.5% and 8.8%, and it can effectively detect the degraded areas from others; total classification accuracy of this approach reached 86.21%. It verified that the silt content was the best indicator indeed to detect the desertification or land degradation in drylands. (C) 2014 Elsevier B.V. All rights reserved.
机译:遥感技术已显示出估计土壤性质的巨大潜力。本文提出了一种利用实测高光谱图像和BJ-1多光谱图像来定量估算土壤中泥沙含量的方法,并建立了一种可用于检测荒漠化或土地退化的基于土壤的模型。测试地点位于中国内蒙古锡林郭勒盟的奥丁达格沙地。进行土壤采样以分析土壤颗粒组成,并在实验室中检查土壤样品的光谱特性。统计上区分了退化土地和其他土地之间土壤颗粒组成的差异,并基于偏最小二乘回归(PLSR)分析了土壤颗粒含量与光谱反射率的相关性,从而确定了校正预测模型所需的敏感带。通过使用预测残差平方和(PRESS)评估模型的有效性。结果表明,淤泥含量是表明土地退化的重要因素,并且随着土地退化的发展逐渐降低。退化土地与其他土地之间的淤泥含量存在显着差异,未退化土地的淤泥含量几乎是退化土地的淤泥含量的三倍。基于BJ-1多光谱图像的PLSR模型的R-2(R-2 = 0.504)低于实测光谱模型的R-2(R-2 = 0.725),并且经过验证的PRESS(PRESS = 0.753)也高于基于测得的光谱(PRESS = 0.562)。然而,BJ-1多光谱图像的确显示了相当大的预测土壤泥沙含量的能力。与常规回归方法相比,PLSR不仅可以有效地进行因变量或自变量选择,而且可以可靠地确定较高的回归模型。稳定性和较低的误差。通过统计和人工交互调整相结合,将不同退化土地分类的淤泥含量阈值确定为3.5%和8.8%,可以有效地识别出其他退化土地。该方法的总分类准确率达到86.21%。它证实了淤泥含量确实是检测干旱地区荒漠化或土地退化的最佳指标。 (C)2014 Elsevier B.V.保留所有权利。

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