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Estimation of Leaf Nitrogen Content using Artificial Neural Network with Cross-Learning Scheme and Significant Wavelengths

机译:带有交叉学习方案和显着波长的人工神经网络估算叶片氮含量

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Reflectance from crops provides spectral information for non-destructive monitoring of their nutrition status. In order to develop a multi-spectral imaging system for remote sensing of the nitrogen content of crops, the significant wavelengths and calibration models were carefully evaluated in this study. The significant wavelengths in full band (400-2500 nm) and a selected band (450-950 nm), which is suitable for silicon CCD cameras, were investigated. In this article, significant wavelengths for estimating nitrogen content of cabbage seedling leaves were first determined by SMLR (stepwise multi-linear regression) analysis. A proposed ANN (artificial neural network) model with cross-learning scheme (ANN-CL) was further developed to increase the prediction accuracy. To comply with the design of a practical multi-spectral imaging system using silicon CCD cameras and commercially available bandpass filters, an ANN-CL model with four inputs of spectral absorbance at 490, 570, 600, and 680 nm was developed. The calibration results (r c = 0.93, SEC = 0.873%, and SEV = 0.960%) reduced the SEV about 15% when compared with the SMLR method with four wavelengths (SEV = 1.099%). In addition, the results were comparable to that of SMLR with seven wavelengths (r c = 0.94, SEC = 0.806%, and SEV = 0.993%) in the full band. These results indicated that the ANN model with cross-learning using spectral information at 490, 570, 600, and 680 nm could be used to develop a practical remote sensing system to predict nitrogen content of cabbage seedlings
机译:作物的反射率可提供光谱信息,以无损监测其营养状况。为了开发用于遥感农作物氮含量的多光谱成像系统,在这项研究中仔细评估了重要的波长和校准模型。研究了适用于硅CCD相机的全波段(400-2500 nm)和选定波段(450-950 nm)的有效波长。在本文中,首先通过SMLR(逐步多线性回归)分析来确定用于估计白菜苗叶氮含量的重要波长。进一步提出了一种带有交叉学习方案的人工神经网络(ANN-CL)模型,以提高预测精度。为了符合使用硅CCD相机和市售带通滤光片的实际多光谱成像系统的设计,开发了ANN-CL模型,该模型具有490、570、600和680 nm的四个光谱吸收率输入。与四波长SMLR方法(SEV = 1.099%)相比,校准结果(r c = 0.93,SEC = 0.873%,SEV = 0.960%)使SEV降低了约15%。此外,该结果与全波段七个波长(r c = 0.94,SEC = 0.806%和SEV = 0.993%)的SMLR相当。这些结果表明,利用在490、570、600和680 nm处的光谱信息进行交叉学习的ANN模型可用于开发实用的遥感系统来预测白菜幼苗的氮含量

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