Zhang Xi-jie, Li Min-zan
Key Laboratory of MOE on Modern Precision Agriculture System Integration Research, China Agricultural University, Beijing 100083, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2008 Oct;28(10):2404-8.
A handheld spectroradiometer was used to measure the spectral reflectance of the crop with the measurable range from 325 nm to 1075 nm. Since the first derivative of the spectra can well eliminate spectral error, it was calculated for each spectrum. The cucumber leaves were also sampled and the phosphorus content was measured for each sample with chemical method. First, the correlation between the phosphorus content of the cucumber leaf and the spectral reflectance was analyzed but high coefficient was not obtained. It was shown that there is not high linear relation between those. Then, the analysis was conducted between the phosphorus content of the cucumber leaf and the first derivative of spectrum for each sample. The coefficients were improved. However, it was not high enough to establish an estimation model. It shows that non-linear model is needed to estimate the phosphorus content of the crop leaf based on spectral reflectance. Artificial neural network (ANN) and support vector machine (SVM), the modern ealgorithm for modeling and estimating, were used to establish the nonlinear models. From stepwise multi-regression, four wavelengths, 978, 920, 737 and 458 nm, were selected as modeling wavebands. For the Artificial Neural Network (ANN) model, the data of spectral reflectance in the four wavebands were taken as the input and the phosphorus content was taken as the output. And the number of the neurons in the middle layer, the learning rate, and the learning error were set as 25, 0.05, and 0.001, respectively. The calibration accuracy of the model was 0.995, and the validation accuracy reached to 0.712. For the Support Vector Machine (SVM) model, the selected kernel function was anova, and the penalty parameter C and the linear epsilon-insensitive loss function were set as 100 and 0.00001, respectively. The calibration accuracy of the model was closed to 1, and the validation accuracy reached to 0.754. It can be concluded that both nonlinear models are practical.
使用手持式光谱辐射仪测量作物的光谱反射率,其可测量范围为325纳米至1075纳米。由于光谱的一阶导数可以很好地消除光谱误差,因此对每个光谱都进行了计算。还采集了黄瓜叶片样本,并用化学方法测量了每个样本的磷含量。首先,分析了黄瓜叶片磷含量与光谱反射率之间的相关性,但未获得高系数。结果表明,二者之间不存在高度线性关系。然后,对每个样本的黄瓜叶片磷含量与光谱一阶导数进行了分析。系数有所提高。然而,仍不足以建立估计模型。这表明需要基于光谱反射率建立非线性模型来估计作物叶片的磷含量。使用人工神经网络(ANN)和支持向量机(SVM)这两种现代建模和估计算法来建立非线性模型。通过逐步多元回归,选择了978、920、737和458纳米这四个波长作为建模波段。对于人工神经网络(ANN)模型,将四个波段的光谱反射率数据作为输入,磷含量作为输出。中间层神经元数量、学习率和学习误差分别设置为25、0.05和0.001。模型的校准精度为0.995,验证精度达到0.712。对于支持向量机(SVM)模型,选择的核函数为anova,惩罚参数C和线性ε不敏感损失函数分别设置为100和0.00001。模型的校准精度接近1,验证精度达到0.754。可以得出结论,这两种非线性模型都是实用的。