Detecting Ganoderma basal stem rot disease on oil palm using artificial neural network method

IF 0.5 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Communications in Mathematical Biology and Neuroscience Pub Date : 2023-01-01 DOI:10.28919/cmbn/7911
Hermantoro, M. A. Kurniawan, J. P. Trinugroho, T. Suparyanto, Mahmud Isnan, D. Sudigyo, B. Pardamean
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引用次数: 1

Abstract

. The oil palm tree is one of the essential plants with a major contribution to the Indonesian economy but is also vulnerable to pathogen infection, such as Ganoderma . Ganoderma boninense is a group of polyporous fungi which is responsible for Basal Stem Rot disease. The disease is extremely serious and easily spreads, posing a significant threat to the economy, so early detection of the disease becomes vital. However, the current detection techniques for the disease are expensive and time-consuming; hence, they are not ideal for large plantation areas. The development of image processing technology could be utilized to predict Ganoderma infection, using the images that are captured by a drone. This research aims to predict the spread of Ganoderma infection, in the oil palm tree plantation area in North Sumatra, Indonesia, by utilizing image processing and Artificial Neural Network methods. Our model results showed the prediction accuracy (with Green color) was 73,8%. In addition, we also showed the distribution of Ganoderma infection in the area: score 0 was 229 trees, score 1 was 295 trees, score 2 was 112 trees, score 3 was 238 trees, and score 4 was 23 trees. Overall, our research provided a non-destructive method to detect Basal Stem Rot disease in the oil palm plantation sites.
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应用人工神经网络方法检测油棕灵芝根茎腐病
。油棕是对印尼经济做出重大贡献的重要植物之一,但也容易受到病原菌感染,比如灵芝。牛乳灵芝是一种多孔真菌,是引起根腐病的主要病原菌。这种疾病非常严重,容易传播,对经济构成重大威胁,因此及早发现疾病至关重要。然而,目前的疾病检测技术既昂贵又耗时;因此,它们不适合大面积种植。图像处理技术的发展可以利用无人机拍摄的图像来预测灵芝感染。本研究旨在利用图像处理和人工神经网络方法预测印尼北苏门答腊岛油棕种植区灵芝侵染的传播。我们的模型结果显示,预测精度(绿色)为73.8%。此外,我们还显示了该地区灵芝感染的分布情况:0分229棵,1分295棵,2分112棵,3分238棵,4分23棵。总之,我们的研究提供了一种无损检测油棕种植地基底茎腐病的方法。
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来源期刊
Communications in Mathematical Biology and Neuroscience
Communications in Mathematical Biology and Neuroscience COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
2.10
自引率
15.40%
发文量
80
期刊介绍: Communications in Mathematical Biology and Neuroscience (CMBN) is a peer-reviewed open access international journal, which is aimed to provide a publication forum for important research in all aspects of mathematical biology and neuroscience. This journal will accept high quality articles containing original research results and survey articles of exceptional merit.
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