Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi

Large scale planting of coconut trees requires on-time detection of diseases such as Red Palm Weevil (RPW) is more than 60% of coconut tree plantations in the Peninsula of Malaysia. In order to overcome this problem, remote sensing offers a better solution to detect pest diseases and map the coconut...

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Main Author: Nik Effendi, Nik Ahmad Faris
Format: Thesis
Language:English
Published: 2020
Subjects:
Online Access:https://ir.uitm.edu.my/id/eprint/33509/
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author Nik Effendi, Nik Ahmad Faris
author_facet Nik Effendi, Nik Ahmad Faris
author_sort Nik Effendi, Nik Ahmad Faris
building UiTM Institutional Repository
collection Online Access
description Large scale planting of coconut trees requires on-time detection of diseases such as Red Palm Weevil (RPW) is more than 60% of coconut tree plantations in the Peninsula of Malaysia. In order to overcome this problem, remote sensing offers a better solution to detect pest diseases and map the coconut trees healthiness by the disease on time. It is also useful tool to monitor the development of coconut plantations. Remote Sensing satellite image can provide user requirement data and has the ability to acquire data in narrow and contiguous spectral bands, enabling to detect the healthiness and pest infestation by using remote sensing technique. In this study, two different classification technique used to detect and classify the healthiness of coconut trees such as unsupervised classification method based on Normalized Different Vegetation Index (NDVI) value and supervised classification method based on Maximum Likelihood (ordinary method) and Support Vector Machine (machine learning). Results: All these methods usually showed better results, as it could provide overall accuracy about 88% and the kappa value is 0.7533 when compare the NDVI value with the ground truth data. Besides, supervised classification method with different technique that is ML and SVM also provide better results in classify the healthiness of coconut tree. Based on the result, it can conclude that Remote Sensing technique can be a used to detect the healthiness of coconut tree and RPW infestation.
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institution Universiti Teknologi MARA
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publishDate 2020
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spelling uitm-335092020-08-25T06:37:20Z https://ir.uitm.edu.my/id/eprint/33509/ Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi Nik Effendi, Nik Ahmad Faris Aerial geography Remote Sensing Geomatics Large scale planting of coconut trees requires on-time detection of diseases such as Red Palm Weevil (RPW) is more than 60% of coconut tree plantations in the Peninsula of Malaysia. In order to overcome this problem, remote sensing offers a better solution to detect pest diseases and map the coconut trees healthiness by the disease on time. It is also useful tool to monitor the development of coconut plantations. Remote Sensing satellite image can provide user requirement data and has the ability to acquire data in narrow and contiguous spectral bands, enabling to detect the healthiness and pest infestation by using remote sensing technique. In this study, two different classification technique used to detect and classify the healthiness of coconut trees such as unsupervised classification method based on Normalized Different Vegetation Index (NDVI) value and supervised classification method based on Maximum Likelihood (ordinary method) and Support Vector Machine (machine learning). Results: All these methods usually showed better results, as it could provide overall accuracy about 88% and the kappa value is 0.7533 when compare the NDVI value with the ground truth data. Besides, supervised classification method with different technique that is ML and SVM also provide better results in classify the healthiness of coconut tree. Based on the result, it can conclude that Remote Sensing technique can be a used to detect the healthiness of coconut tree and RPW infestation. 2020-08-12 Thesis NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/33509/1/33509.pdf Nik Effendi, Nik Ahmad Faris (2020) Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi. (2020) Degree thesis, thesis, Universiti Teknologi Mara Perlis.
spellingShingle Aerial geography
Remote Sensing
Geomatics
Nik Effendi, Nik Ahmad Faris
Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi
title Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi
title_full Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi
title_fullStr Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi
title_full_unstemmed Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi
title_short Classification technique for determining the healthiness of coconut tree / Nik Ahmad Faris Nik Effendi
title_sort classification technique for determining the healthiness of coconut tree / nik ahmad faris nik effendi
topic Aerial geography
Remote Sensing
Geomatics
url https://ir.uitm.edu.my/id/eprint/33509/