A hyperspectral reflectance data based model inversion methodology to detect reniform nematodes in cotton

P. K. Palacharla, S. Durbha, R. King, B. Gokaraju, G. Lawrence
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引用次数: 8

Abstract

Rotylenchulus reniformis is a newly emerging nematode species affecting the cotton crop and quickly spreading throughout the southeastern United States. Effective use of nematicides at a variable rate is the only economic counter measure. It requires the nematode population in the field to be known, which in turn depends on the collection of soil samples from the field and analyzing them in the laboratory. This process is economically prohibitive. Hence there is a need to develop alternative methods through which the actual numbers of reniform nematode present in the field can be determined. In this paper we propose a methodology in which a canopy reflectance model (PROSAIL) is inverted using machine learning approaches to retrieve the biophysical parameters, and relate the key variables to the nematode levels, so that it is possible to quantify at all multi-temporal intervals the nematode infestation at geographically distributed fields. A Support Vector Machine (SVM) Regression method is used for the inversion and retrieval of key biophysical parameters which help to understand and quantify the nature of the nematode infested vegetation. The performance of this approach is analyzed by the accuracy measures of RMSE and N-fold cross validation average on a considerable data set. Finally, a graphical web portal is being developed to facilitate the end users to use their field collected data to determine the extent of the nematode infestation in their crop and retrieve other spatio-temporal statistics.
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基于高光谱反射数据的模型反演方法在棉花中检测肾形线虫
reniformis Rotylenchulus是一种影响棉花作物的新出现的线虫物种,并在美国东南部迅速蔓延。以可变比率有效使用杀线虫剂是唯一经济的对策。它需要了解田间的线虫种群,而这又依赖于从田间收集土壤样本并在实验室对其进行分析。这一过程在经济上是令人望而却步的。因此,有必要开发替代方法,通过该方法可以确定现场存在的肾形线虫的实际数量。在本文中,我们提出了一种方法,利用机器学习方法反演树冠反射模型(PROSAIL)来检索生物物理参数,并将关键变量与线虫水平联系起来,从而有可能在地理分布区域的所有多时间间隔内量化线虫侵染。利用支持向量机(SVM)回归方法反演和检索关键生物物理参数,有助于了解和量化线虫侵染植被的性质。在相当大的数据集上,通过RMSE和n倍交叉验证平均值的精度度量来分析该方法的性能。最后,正在开发一个图形门户网站,以方便最终用户使用其田间收集的数据来确定其作物中线虫感染的程度并检索其他时空统计数据。
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