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Estimation of rice leaf nitrogen contents based on hyperspectral LIDAR

机译:基于高光谱激光雷达的水稻叶片含氮量估算

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Precision agriculture has become a global research hotspot in recent years. Thus, a technique for rapidly monitoring a farmland in a large scale and for accurately monitoring the growing status of crops needs to be established. In this paper, a novel technique, i.e., hyperspectral LIDAR (HL) which worked based on wide spectrum emission and a 32-channel detector was introduced, and its potential in vegetation detection was then evaluated. These spectra collected by HL were used to classify and derive the nitrogen contents of rice under four different nitrogen content levels with support vector machine (SVM) regression. Meanwhile the wavelength selection and channel correction method for achieving high spectral resolution were discussed briefly. The analysis results show that: (1) the reflectance intensity of the selected characteristic wavelengths of HL system has high correlation with different nitrogen contents levels of rice. (2) By increasing the number of wavelengths in calculation, the classification accuracy is greatly improved (from 54% with 4 wavelengths to 83% with 32 wavelengths) and so the regression coefficient r(2) is (from 0.51 with 4 wavelengths to 0.75 with 32 wavelengths). (3) Support vector machine (SVM) is a useful regression method for rice leaf nitrogen contents retrieval. These analysis results can help farmers to make fertilization strategies more accurately. The receiving channels and characteristic wavelengths of HL system can be flexibly selected according to different requirements and thus this system will be applied in other fields, such as geologic exploration and environmental monitoring. (C) 2015 Elsevier B.V. All rights reserved.
机译:近年来,精准农业已成为全球研究热点。因此,需要建立一种用于大规模快速监视农田并精确监视农作物生长状况的技术。本文介绍了一种新技术,即基于广谱发射和32通道检测器的高光谱激光雷达(HL),然后评估了其在植被检测中的潜力。 HL收集的这些光谱用于通过支持向量机(SVM)回归对四种不同氮含量水平下的水稻氮含量进行分类和推导。同时简要讨论了实现高光谱分辨率的波长选择和信道校正方法。分析结果表明:(1)选择的HL系统特征波长的反射强度与水稻不同氮含量水平有较高的相关性。 (2)通过增加计算中的波长数量,大大提高了分类精度(从4个波长的54%提高到32个波长的83%),因此回归系数r(2)为(从4个波长的0.51到0.75)具有32个波长)。 (3)支持向量机(SVM)是水稻叶片氮含量恢复的一种有用的回归方法。这些分析结果可以帮助农民更准确地制定施肥策略。 HL系统的接收通道和特征波长可以根据不同的需求灵活选择,因此该系统将被应用于其他领域,例如地质勘探和环境监测。 (C)2015 Elsevier B.V.保留所有权利。

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