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Classification of Basal Stem Rot Disease in Oil Palm Plantations Using Terrestrial Laser Scanning Data and Machine Learning

机译:使用陆地激光扫描数据和机器学习对油棕种植园基底干腐病的分类

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摘要

The oil palm industry is vital for the Malaysian economy. However, it is threatened by the Ganoderma boninense fungus, which causes basal stem rot (BSR) disease. Foliar symptoms of the disease include the appearance of several unopened spears, flat crowns, and small crown size. The effect of this disease depends on the severity of the infection. Currently, the disease can be detected manually by analyzing the oil palm tree’s physical structure. Terrestrial laser scanning (TLS) is an active ranging method that uses laser light, which can directly represent the tree’s external structure. This study aimed to classify the healthiness levels of the BSR disease using a machine learning (ML) approach. A total of 80 oil palm trees with four different healthiness levels were pre-determined by the experts during data collection with 40 each for training and testing. The four healthiness levels are T0 (healthy), T1 (mildly infected), T2 (moderately infected), and T3 (severely infected), with 10 trees in each level. A terrestrial scanner was mounted at a height of 1 m, and each oil palm was scanned at four positions at a distance of 1.5 m around the tree. Five tree features were extracted from the TLS data: C200 (crown slice at 200 cm from the top), C850 (crown slice at 850 cm from the top), crown area (number of pixels inside the crown), frond angle, and frond number. C200 and C850 were obtained using the crown stratification method, while the other three features were obtained from the top-down image. The obtained features were then analyzed by principal component analysis (PCA) to reduce the dimensionality of the dataset and increase its interpretability while at the same time minimizing information loss. The results showed that the kernel naïve Bayes (KNB) model developed using the input parameters of the principal components (PCs) 1 and 2 had the best performance among 90 other models with a multiple level accuracy of 85% and a Kappa coefficient of 0.80. Furthermore, the combination of the two highest PC variance with the most weighted to frond number, frond angle, crown area, and C200 significantly contributed to the classification success. The model also could classify healthy and mildly infected trees with 100% accuracy. Therefore, it can be concluded that the ML approach using TLS data can be used to predict early BSR infection with high accuracy.
机译:油棕业是马来西亚经济至关重要。但是,它是由灵芝boninense真菌,从而导致茎基腐病(BSR)疾病的威胁。该疾病的症状的叶面包括几个未开封的矛,平坦牙冠和小冠的外观尺寸。本病的效果取决于感染的严重程度。目前,这种疾病可以通过手动分析油棕榈树的物理结构检测。地面激光扫描(TLS)是使用激光光,它可以直接表示树的外部结构的有源测距方法。本研究旨在使用机器学习(ML)方法的BSR疾病是否健康水平进行分类。共有80个油棕榈树与四个不同的健康性水平得到了专家的数据收集与40分别用于训练和测试过程中预先确定。四个健全水平T0(健康的),T1(轻度感染),T2(中度感染),以及T3(严重感染),其中在每个级别10倍的树木。的地面扫描仪安装在1米的高度,并且每个油棕在1.5米左右的树中的距离在四个位置扫描。五个树特征是从TLS数据中提取:C200(冠切片在从顶部200厘米),C850(在850厘米冠切片从顶部),胎冠区域(冠内的像素数),藻体角,和叶状体数字。使用冠分层方法获得C200和C850,而其他三个特征是从自顶向下的图像而获得的。将所获得的特征然后通过主成分分析(PCA)分析,以降低数据集的维数,并增加其可解释性,而在同一时间最小化信息损失。结果表明,内核朴素贝叶斯(KNB)模型使用主成分(PC)的1和2具有除其他90个型号,85%的多级精度和0.80的Kappa系数的最佳性能的输入参数开发的。此外,两个最高PC方差最加权以藻体数,藻体角,胎冠区,和C200的组合显著促成了分类结果。该模型还可以用100%的准确率和健康的轻度感染的树木进行分类。因此,可以得出结论,使用TLS数据ML的方法可用于预测早期BSR感染具有高的精度。

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