Liu Lei, Shen Run-ping, Ding Guo-xiang
Key Laboratory of Meteorological Disaster of Ministry of Education, Nanjing University of Information Science & Technology, Nanjing 210044, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2011 Mar;31(3):762-6.
Hyperspectral remote sensing technology can be extensively applied in soil nutrient research due to its three special advantages, high spectral resolution, strong waveband continuity as well as a great deal of spectral information. Based on analyzing the soil organic matter content using hyper-spectral remote sensing technology, soil nutrients status and its dynamic changes can be fully understood, thus providing the scientific basis for guidance of the agricultural production and protection of agricultural ecological environment. The present paper studies the relationship between soil spectrum and soil organic fraction based on spectrum curves (ranging from 350 to 2500 nm) of 34 soil samples, which were collected in Yujiang and Taihe County, Jiangxi Province. First, soil reflection spectrum was mathematically manipulated into first derivative reflectance spectra (FDR) and inverse-log spectra (log(1/R)); second, the relationship between soil spectrum and soil organic fraction was investigated by step-wise multiple linear regression (SMLR) and partial least square regression (PLSR) on the ground of characteristic absorption; third, corresponding estimation model was built and examined. The result conveys that spectral data are compressed by carrying out arithmetic average operation by 10 nm for intervals. The first derivative of the reflectivity is an effective spectrum indicator, in the stepwise multiple linear regression analysis of soil organic matter, for the first derivative transformation, the regression models' precision of establishment and verification increased. The model built by PLSR method based on the characteristic absorption bands precedes that of SMLR. In the PLSR model of soil reflection spectrum and the inverse-log spectra, the test samples' average of relative error is 16% and 17% respectively, the correlation coefficient between retrieval value and measured value is 0.84 and 0.91 respectively, for it's faster to estimate the soil organic fraction.
高光谱遥感技术因其具有高光谱分辨率、强波段连续性以及大量光谱信息这三大特殊优势,可广泛应用于土壤养分研究。基于利用高光谱遥感技术分析土壤有机质含量,能够全面了解土壤养分状况及其动态变化,从而为指导农业生产和保护农业生态环境提供科学依据。本文基于在江西省余江县和泰和县采集的34个土壤样本的光谱曲线(范围为350至2500纳米),研究了土壤光谱与土壤有机组分之间的关系。首先,将土壤反射光谱进行数学处理,得到一阶导数反射光谱(FDR)和倒数对数光谱(log(1/R));其次,基于特征吸收,通过逐步多元线性回归(SMLR)和偏最小二乘回归(PLSR)研究土壤光谱与土壤有机组分之间的关系;第三,建立并检验相应的估算模型。结果表明,通过对光谱数据按10纳米间隔进行算术平均运算进行压缩。反射率的一阶导数是土壤有机质逐步多元线性回归分析中的有效光谱指标,对于一阶导数变换,建立和验证的回归模型精度提高。基于特征吸收带由PLSR方法建立的模型优于SMLR模型。在土壤反射光谱和倒数对数光谱的PLSR模型中,测试样本的平均相对误差分别为16%和17%,反演值与测量值之间的相关系数分别为0.84和0.91,因为其估算土壤有机组分的速度更快。