Ahmadi Parisa, Muharam Farrah Melissa, Ahmad Khairulmazmi, Mansor Shattri, Abu Seman Idris
Department of Agriculture Technology, Faculty of Agriculture, Universiti Putra Malaysia, 43400 Serdang, Selangor, Malaysia.
Department of Agriculture Technology, Faculty of Agriculture, Universiti Putra Malaysia, 43400 Serdang, Selangor, Malaysia; Geospatial Information Science Research Centre, Faculty of Engineering, Universiti Putra Malaysia, 43400 Serdang, Selangor, Malaysia; and Institute of Plantation Studies, Universiti Putra Malaysia, 43400 Serdang, Selangor, Malaysia.
Plant Dis. 2017 Jun;101(6):1009-1016. doi: 10.1094/PDIS-12-16-1699-RE. Epub 2017 Apr 4.
Ganoderma boninense is a causal agent of basal stem rot (BSR) and is responsible for a significant portion of oil palm (Elaeis guineensis) losses, which can reach US$500 million a year in Southeast Asia. At the early stage of this disease, infected palms are symptomless, which imposes difficulties in detecting the disease. In spite of the availability of tissue and DNA sampling techniques, there is a particular need for replacing costly field data collection methods for detecting Ganoderma in its early stage with a technique derived from spectroscopic and imagery data. Therefore, this study was carried out to apply the artificial neural network (ANN) analysis technique for discriminating and classifying fungal infections in oil palm trees at an early stage using raw, first, and second derivative spectroradiometer datasets. These were acquired from 1,016 spectral signatures of foliar samples in four disease levels (T1: healthy, T2: mildly-infected, T3: moderately infected, and T4: severely infected). Most of the satisfactory results occurred in the visible range, especially in the green wavelength. The healthy oil palms and those which were infected by Ganoderma at an early stage (T2) were classified satisfactorily with an accuracy of 83.3%, and 100.0% in 540 to 550 nm, respectively, by ANN using first derivative spectral data. The results further indicated that the sensitive frond number modeled by ANN provided the highest accuracy of 100.0% for frond number 9 compared with frond 17. This study showed evidence that employment of ANN can predict the early infection of BSR disease on oil palm with a high degree of accuracy.
邦那灵芝是油棕树基干腐病的致病因子,导致油棕大量减产,在东南亚地区每年造成的损失可达5亿美元。在该病早期,被感染的油棕树没有症状,这给疾病检测带来了困难。尽管有组织和DNA采样技术,但特别需要用一种基于光谱和图像数据的技术来取代昂贵的田间数据收集方法,以便在早期检测到灵芝。因此,本研究旨在应用人工神经网络(ANN)分析技术,利用原始、一阶和二阶导数光谱辐射计数据集,在早期对油棕树的真菌感染进行鉴别和分类。这些数据集来自四个疾病水平(T1:健康,T2:轻度感染,T3:中度感染,T4:重度感染)的1016个叶片样本光谱特征。大多数令人满意的结果出现在可见光范围内,尤其是在绿色波长处。利用一阶导数光谱数据,人工神经网络对健康油棕树和早期感染灵芝的油棕树(T2)分别在540至550纳米范围内进行了令人满意的分类,准确率分别为83.3%和100.0%。结果还表明,人工神经网络模拟的敏感叶片数在第9片叶片时提供了最高的准确率,为100.0%,而第17片叶片的准确率则较低。这项研究表明,人工神经网络的应用能够高度准确地预测油棕树基干腐病的早期感染情况。