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A logistic radial basis function regression method for discrimination of cover crops in olive orchards

机译:基于逻辑径向基函数回归的橄榄园覆盖作物鉴别方法

摘要

Olive (Olea europaea L.) is the main perennial Spanish crop. Soil management in olive orchards is mainly based on intensive and tillage operations, which have a great relevancy in terms of negative environmental impacts. Due to this reason, the European Union (EU) only subsidizes cropping systems which require the implementation of conservation agro-environmental techniques such as cover crops between the rows. Remotely sensed data could offer the possibility of a precise follow-up of presence of cover crops to control these agrarian policy actions, but firstly, it is crucial to explore the potential for classifying variations in spectral signatures of olive trees, bare soil and cover crops using field spectroscopy. In this paper, we used hyperspectral signatures of bare soil, olive trees, and sown and dead cover crops taken in spring and summer in two locations to evaluate the potential of two methods (MultiLogistic regression with Initial and Radial Basis Function covariates, MLIRBF; and SimpleLogistic regression with Initial and Radial Basis Function covariates, SLIRBF) for classifying them in the 400-900 nm spectrum. These methods are based on a MultiLogistic regression model formed by a combination of linear and radial basis function neural network models. The estimation of the coefficients of the model is carried out basically in two phases. First, the number of radial basis functions and the radii and centres' vector are determined by means of an evolutionary neural network algorithm. A maximum likelihood optimization method determines the rest of the coefficients of a MultiLogistic regression with a set of covariates that include the initial variables and the radial basis functions previously estimated. Finally, we apply forward stepwise techniques of structural simplification. We compare the performance of these methods with robust classification methods: Logistic Regression without covariate selection, MLogistic; Logistic Regression with covariate selection, SLogistic; Logistic Model Trees algorithm (LMT); the C4.5 induction tree; Naïve Bayesian tree algorithm (NBTree); and boosted C4.5 trees using AdaBoost.M1 with 10 and 100 boosting iterations. MLIRBF and SLIRBF models were the best discriminant functions in classifying sown or dead cover crops from olive trees and bare soil in both locations and seasons by using a seven-dimensional vector with green (575 nm), red (600, 625, 650 and 675 nm), and near-infrared (700 and 725 nm) wavelengths as input variables. These models showed a correct classification rate between 95.56% and 100% in both locations and seasons. These results suggest that mapping covers crops in olive trees could be feasible by the analysis of high resolution airborne imagery acquired in spring or summer for monitoring the presence or absence of cover crops by the EU or local administrations in order to make the decision on conceding or not the subsidy. © 2010 Elsevier Ltd. All rights reserved.
机译:橄榄(Olea europaea L.)是西班牙多年生的主要农作物。橄榄园的土壤管理主要基于集约耕作和耕作作业,这在负面的环境影响方面具有重大意义。由于这个原因,欧洲联盟(EU)仅对需要实施保护性农业环境技术(例如行与行之间的覆盖作物)的作物系统进行补贴。遥感数据可以提供对覆盖作物的存在进行精确跟进以控制这些农业政策行动的可能性,但首先,至关重要的是探索对橄榄树,裸土和覆盖作物的光谱特征变化进行分类的潜力使用现场光谱。在本文中,我们使用了春季和夏季在两个位置采集的裸露土壤,橄榄树以及播种和枯死作物的高光谱特征来评估两种方法的潜力(具有初始和径向基函数协变量的MultiLogistic回归MLIRBF;以及具有初始和径向基函数协变量(SIRBF)的SimpleLogistic回归可将其分类为400-900 nm光谱。这些方法基于由线性和径向基函数神经网络模型组合而成的MultiLogistic回归模型。模型系数的估计基本上分两个阶段进行。首先,借助进化神经网络算法确定径向基函数的数量以及半径和中心向量。最大似然优化方法使用一组包括初始变量和先前估计的径向基函数的协变量来确定MultiLogistic回归的其余系数。最后,我们应用结构简化的逐步技术。我们将这些方法与稳健的分类方法的性能进行比较:没有协变量选择的Logistic回归,MLogistic;具有协变量选择的Logistic回归,SLogistic;逻辑模型树算法(LMT); C4.5感应树;朴素贝叶斯树算法(NBTree);并使用AdaBoost.M1进行了10和100次增强迭代,从而增强了C4.5树。 MLIRBF和SLIRBF模型是最好的判别函数,可通过使用带有绿色(575 nm),红色(600、625、650和675)的七维向量对来自位置和季节的橄榄树和裸土的播种或枯死作物进行分类波长)和近红外(700和725 nm)波长作为输入变量。这些模型在地点和季节均显示正确分类率在95.56%和100%之间。这些结果表明,通过分析春季或夏季获取的高分辨率航空影像以监测欧盟或地方政府是否有遮盖作物,以便做出让步或拒绝的决定,可以对橄榄树的遮盖作物进行制图是可行的。没有补贴。 ©2010 ElsevierLtd。保留所有权利。

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