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利用自组织映射上的遥感高光谱数据对棉花中肾形肾状线虫数量进行分类。

Classification of Rotylenchulus reniformis Numbers in Cotton Using Remotely Sensed Hyperspectral Data on Self-Organizing Maps.

作者信息

Doshi Rushabh A, King Roger L, Lawrence Gary W

机构信息

Graduate Student, Department of Electrical and Computer Engineering.

出版信息

J Nematol. 2010 Sep;42(3):179-93.

Abstract

Rotylenchulus reniformis is one of the major nematode pests capable of reducing cotton yields by more than 60%, causing estimated losses that may exceed millions of dollars U.S. Therefore, early detection of nematode numbers is necessary to reduce these losses. This study investigates the feasibility of using remotely sensed hyperspectral data (reflectances) of cotton plants affected with different nematode population numbers with self-organizing maps (SOM) in correlating and classifying nematode population numbers extant in a plant's rhizosphere. The hyperspectral reflectances were classified into three classes based on R. renifomis population numbers present in plant's rhizosphere. Hyperspectral data (350-2500 nm) were also sub-divided into Visible, Red Edge + Near Infrared (NIR) and Mid-IR region to determine the sub-region most effective in spectrally classifying the nematode population numbers. Various combinations of different feature extraction and dimensionality reduction methods were applied in different regions to extract reduced sets of features. These features were then classified using a supervised-SOM classification method. Our results suggest that the overall classification accuracies, in general, for most methods in most regions (except visible region) varied from 60% to 80%, thereby, indicating a positive correlation between the nematode numbers present in plant's rhizosphere and the corresponding plant's hyperspectral signatures. Results showed that classification accuracies in the Mid-IR region were comparable to the accuracies obtained in other sub-regions. Finally, based on our findings, the use of remotely-sensed hyperspectral data with SOM could prove to be extremely time efficient in detecting nematode numbers present in the soil.

摘要

肾形肾状线虫是主要的线虫害虫之一,能使棉花产量降低60%以上,造成的损失估计可能超过数百万美元。因此,尽早检测线虫数量对于减少这些损失很有必要。本研究探讨了利用受不同线虫种群数量影响的棉花植株的遥感高光谱数据(反射率)和自组织映射(SOM)来关联和分类植物根际现存线虫种群数量的可行性。根据植物根际存在的肾形肾状线虫种群数量,将高光谱反射率分为三类。高光谱数据(350 - 2500纳米)还被细分为可见光、红边 + 近红外(NIR)和中红外区域,以确定在光谱上对线虫种群数量进行分类最有效的子区域。在不同区域应用不同特征提取和降维方法的各种组合来提取精简的特征集。然后使用监督式SOM分类方法对这些特征进行分类。我们的结果表明,一般来说,大多数方法在大多数区域(可见光区域除外)的总体分类准确率在60%至80%之间,从而表明植物根际存在的线虫数量与相应植物的高光谱特征之间存在正相关。结果表明,中红外区域的分类准确率与其他子区域获得的准确率相当。最后,基于我们的研究结果,利用带有SOM的遥感高光谱数据在检测土壤中存在的线虫数量方面可能被证明极其高效省时。

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