Abstract

In Malaysia, oil palm industry has made an enormous contribution to economic and social prosperity. However, it has been affected by basal stem rot (BSR) disease caused by Ganoderma boninense (G. boninense) fungus. The conventional practice to detect the disease is through manual inspection by a human expert every two weeks. This study aimed to identify the most suitable machine learning model to classify the inoculated (I) and uninoculated (U) oil palm seedlings with G. boninense before the symptoms’ appearance using hyperspectral imaging. A total of 1122 sample points were collected from frond 1 and frond 2 of 28 oil palm seedlings at the age of 10 months old, with 540 and 582 reflectance spectra extracted from U and I seedlings, respectively. The significant bands were identified based on the high separation between U and I seedlings, where the differences were observed significantly in the NIR spectrum. The reflectance values of each selected band were later used as input parameters of the 23 machine learning models developed using decision trees, discriminant analysis, logistic regression, naïve Bayes, support vector machine (SVM), k-nearest neighbor (kNN), and ensemble modelling with various types of kernels. The bands were optimized according to the classification accuracy achieved by the models. Based on the F-score and performance time, it was demonstrated that coarse Gaussian SVM with 9 bands performed better than the models with 35, 18, 14, and 11 bands. The coarse Gaussian SVM achieved an F-score of 95.21% with a performance time of 1.7124 s when run on a personal computer with an Intel® Core™ i7-8750H processor and 32 GB RAM. This early detection could lead to better management in the oil palm industry.

Highlights

  • Oil palm (Elaeis guineensis) is a palm species that has been extensively planted in Southeast Asia, primarily in Indonesia and Malaysia, to fulfil the global demand for vegetable oil due to the increasing population, income, and growing biofuel market

  • In Southeast Asia, oil palm has been affected by basal stem rot (BSR) disease caused by white-rot fungus identified as Ganoderma boninense (G. boninense)

  • It can be concluded that reflectance spectra of U and I seedlings showed significant differences in the NIR spectrum; all significant bands were identified from the NIR wavebands

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Summary

Introduction

Oil palm (Elaeis guineensis) is a palm species that has been extensively planted in Southeast Asia, primarily in Indonesia and Malaysia, to fulfil the global demand for vegetable oil due to the increasing population, income, and growing biofuel market. In Southeast Asia, oil palm has been affected by basal stem rot (BSR) disease caused by white-rot fungus identified as Ganoderma boninense (G. boninense). BSR is a soil-borne disease that once infected only mature trees; the study by Sanderson [1] reported that seedlings are susceptible to the infection whereby the symptoms appear earlier and more severe. The earliest symptoms in oil palm seedlings can be detected by the appearance of fungal mass, followed by yellowing and necrosis of older leaves [5]. The appearance of fungal mass is difficult to examine by naked eyes and can often be overlooked because it may present or may not present before or after the yellowing of leaves [6,7]

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