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SEVERITY OF GANODERMA BONINENSE DISEASE CLASSIFICATION USING SAR DATA

机译:使用SAR数据的灵芝Boninense病的严重程度

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Basal stem rot disease (BSR) in oil palm plantations is caused by Ganoderma boninense fungus. BSR is a major disease attacking oil palm plantations in Malaysia and Indonesia. But for now, the only available treatment is to prolong the life of oil palm trees as there is no effective treatment for BSR. To control this disease, early detection of G. Boninense infection is a decent strategy. Many researchers have used remote sensing techniques for early detection and mapping of BSR disease in oil palm plantations based on G. boninense infection symptoms. The main objective of this project is to study the potential of radar backscattering for classifying severity level of G. boninense disease in oil palm plantation. The processing stage involved the usage of two different machine learning algorithms to classify severity level of G. boninense in oil palm plantation. This study uses Alos Palsar 2 image with dual polarization; HFI (Horizontal - transmit and Horizontal - receive) and HV (Fforizontal - transmit and Vertical - receive) archived on March 20, 2017. Two classifier models: Multilayer Perceptron (MP) and Kstar are tested by using Weka open source software. The MP classifier model for HV polarization is the best for predicting and classifying severity level of G. boninense in oil palm plantation in terms of correctly classified. Model MP classifier and HV polarization reach 77.17% correctly classified. In addition, this study can separate oil palm by severity of each TO (92.73%), T1 (0%). T2 (93.33%) and T3 (54.55%).
机译:油棕种植园的基底茎腐病(BSR)是由灵芝博纳伦氏真菌引起的。 BSR是马来西亚和印度尼西亚的侵袭油棕榈种植园的主要疾病。但目前,唯一可用的待遇是延长油棕树的寿命,因为没有有效的BSR治疗。为了控制这种疾病,早期检测G. Boninense感染是一种体面的策略。许多研究人员利用遥感技术用于基于G. Boninense感染症状的油棕榈种植园BSR病的早期检测和测绘。该项目的主要目标是研究雷达反散射对油棕榈种植园G. Boninense病的严重程度水平的潜力。处理阶段涉及两种不同机器学习算法的用法来对油棕榈种植园中G. Boninense的严重性水平进行分类。本研究使用了双极化的Alos Palsar 2图像; HFI(水平 - 传输和水平 - 接收)和HV(FERIZONTAL - 传输和垂直 - 接收)于2017年3月20日存档。两个分类器模型:使用Weka开源软件测试多层Perceptron(MP)和KSTAR。用于HV偏振的MP分类模型是在正确分类的方面最适用于预测和分类油棕榈种植园中G.Boninense的严重程度。模型MP分类器和HV极化达到77.17%正确分类。此外,该研究可以通过每种成严重程度分离油棕(92.73%),T1(0%)。 T2(93.33%)和T3(54.55%)。

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