Gao Zhong-ling, Wang Jian-hua, Zheng Xiao-po, Sun Yue-jun, Qin Qi-ming
Guang Pu Xue Yu Guang Pu Fen Xi. 2016 May;36(5):1378-81.
Soil moisture content (SMC) is one of the most important indicators influencing the exchange of energy and water among vegetation, soil, and the atmosphere. Accurate detection of soil moisture content is beneficial to improving the precision of crop yield evaluating and field management measures. In this paper, a novel method ADI (Angle Dryness Index) based on NIR-RED spectral feature space used for calculating SMC was proposed, which improved the accuracy of calculating SMC with red and near infrared band reflectance. It was found that an intermediate parameter θ in NIR-RED feature space was significantly related to SMC, and independent of vegetation coverage according to the linear decomposition of mixed pixel and the empirical correlation between SMC and red/NIR band reflectance which were achieved by previous researches. Then, ADI was proposed with the feature discovered in the paper. The mathematical expression on SMC is nonlinear, and the newton iterative method is applied to ADI for calculation SMC. Then, the newly proposed method was validated with two kinds of remote sensing imagery data (Thematic Mapper (TM) and moderate resolution imaging spectrometer (MODIS)) and the synchronous observed data in the field. Validation results revealed that the ADI- derived SMC was highly accordant with the in-situ results with high correlation (R2=0.74 with TM and R2=0.64 with MODIS data). We also calculated MPDI (Modified Perpendicular Drought Index) developed by Ghulam, which is also proposed with the red and near infrared reflectance. The result showed that the accuracy of MPDI was lower than that of ADI. The most likely reason was that ADI was insensitive to fv, but the calculation errors of fv would reduce the accuracy of SMC estimation. MODIS had a low spatial resolution, thus there may be more than two end members in a mixed pixel. In this case, the linear decomposition of mixed pixel was not applicable and the errors would finally be enlarged. ADI achieved good results in monitoring SMC in vegetated area because it was less influenced by vegetation coverage than other similar approaches. ADI only requires the satellite image data including the red and near infrared band which are available from most of the optical sensors. Therefore, it is an effective and promising method for monitoring SMC in vegetated area, and would be widely used in agriculture, meteorology, and hydrology.
土壤水分含量(SMC)是影响植被、土壤和大气之间能量与水分交换的最重要指标之一。准确检测土壤水分含量有助于提高作物产量评估和田间管理措施的精度。本文提出了一种基于近红外 - 红光谱特征空间用于计算SMC的新方法——角度干燥指数(ADI),该方法提高了利用红光和近红外波段反射率计算SMC的准确性。根据以往研究中混合像元的线性分解以及SMC与红/近红外波段反射率之间的经验相关性发现,近红外 - 红特征空间中的中间参数θ与SMC显著相关,且与植被覆盖度无关。基于此文中发现的特征提出了ADI。SMC的数学表达式是非线性的,将牛顿迭代法应用于ADI来计算SMC。然后,利用两种遥感影像数据(专题制图仪(TM)和中分辨率成像光谱仪(MODIS))以及野外同步观测数据对新提出的方法进行了验证。验证结果表明,由ADI得出的SMC与实地测量结果高度一致,相关性很高(TM数据的R2 = 0.74,MODIS数据的R2 = 0.64)。我们还计算了Ghulam提出的修正垂直干旱指数(MPDI),它也是利用红光和近红外反射率提出的。结果表明,MPDI的准确性低于ADI。最可能的原因是ADI对植被覆盖度不敏感,但植被覆盖度的计算误差会降低SMC估算的准确性。MODIS空间分辨率较低,因此在一个混合像元中可能存在不止两个端元。在这种情况下,混合像元的线性分解不适用,误差最终会放大。ADI在植被覆盖区域监测SMC方面取得了良好的效果,因为它比其他类似方法受植被覆盖度的影响更小。ADI只需要包含红光和近红外波段的卫星图像数据,大多数光学传感器都可获取这些数据。因此,它是一种监测植被覆盖区域SMC的有效且有前景的方法,将在农业、气象学和水文学中得到广泛应用。