Ding Jian-Li, Wu Man-Chun, Liu Hai-Xia, Li Zheng-Guang
College of Resource and Environmental Science, Xinjiang University, Urumqi 830046, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2012 Jul;32(7):1918-22.
The present paper selected the spectral reflectivity of saline soil and vegetation of Weigan-Kuqa River Delta Oasis in the northern margin of the Tarim Basin in Xinjiang as objects, and used various spectral transforms to process the data with continum removed methods, derivate spectra, reciprocal, first order differential and root mean square etc, then analyzed the spectrum features and decided the most sensitive band ranges most relevant to salinization, and used field hyperspectral vegetation index, soil salinity index and measured synthetical spectral index to respectively establish hyperspectral quantitative models which could evaluate the soil salinization degrees. By comparing various spectral transformations of hyperspectral data the result showed that the first derivative of measured soil and vegetation hyperspectral were most sensitive to soil salinization degrees. The hyperspectral quantitative model based on measured synthetical spectral index could monitor soil salinization accurately and was better than the models simply based on vegetation index or soil salinity index. The research provided some scientific basis with soil salinization detection.
本文选取新疆塔里木盆地北缘渭干-库车河三角洲绿洲的盐渍土和植被光谱反射率为研究对象,采用多种光谱变换方法,运用去包络线法、导数光谱、倒数、一阶微分和均方根等对数据进行处理,分析光谱特征,确定与土壤盐渍化最相关的最敏感波段范围,并利用野外高光谱植被指数、土壤盐分指数和实测综合光谱指数分别建立能够评价土壤盐渍化程度的高光谱定量模型。通过比较高光谱数据的各种光谱变换,结果表明,实测土壤和植被高光谱的一阶导数对土壤盐渍化程度最为敏感。基于实测综合光谱指数的高光谱定量模型能够准确监测土壤盐渍化,优于单纯基于植被指数或土壤盐分指数的模型。该研究为土壤盐渍化检测提供了一定的科学依据。