Hole Detection in Plastic Mulch Using Template Matching and Machine Learning Algorithms

Mulch is a ground cover material to maintain soil moisture and temperature stability as a plant medium. Mulch also helps prevent weed growth for better plant growth. For planting with plastic mulch, farmers need to make holes in the mulch the day before planting. Precision agriculture is needed bec...

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Published in:Jurnal Nasional Pendidikan Teknik Informatika (JANAPATI)
Main Authors: Abdul Aziz, Yandra Arkeman, Wisnu Ananta Kusuma, Farohaji Kurniawan
Format: Article
Language:English
Published: Universitas Pendidikan Ganesha 2023-07-01
Subjects:
Online Access:https://ejournal.undiksha.ac.id/index.php/janapati/article/view/60628
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author Abdul Aziz
Yandra Arkeman
Wisnu Ananta Kusuma
Farohaji Kurniawan
author_facet Abdul Aziz
Yandra Arkeman
Wisnu Ananta Kusuma
Farohaji Kurniawan
author_sort Abdul Aziz
collection DOAJ
container_title Jurnal Nasional Pendidikan Teknik Informatika (JANAPATI)
description Mulch is a ground cover material to maintain soil moisture and temperature stability as a plant medium. Mulch also helps prevent weed growth for better plant growth. For planting with plastic mulch, farmers need to make holes in the mulch the day before planting. Precision agriculture is needed because it can obtain savings in input financing, labor, and better yields, so this research aims to identify holes in mulch based on Unmanned Aerial Vehicle images. The advantage of this research is that it can monitor each plant based on the mulch holes, and the number of holes identified can be used as a parameter to estimate the amount of crop production. This research combines Template Matching Algorithm and Machine Learning Algorithm to improve accuracy in predicting holes in mulch. Three machine learning algorithms are used, namely the Random Forest, Support Vector Machine, and XGBoost. The data used is an orthophoto mosaic from aerial photographs. Nine areas were taken from orthophotos to be used as research samples. The results of this study obtained the highest average recall, precision, and f-measure values using the Support Vector Machine algorithm with a recall value of 87.7%, precision of 97.5%, and f-score of 92.3%. This research focuses on reducing detected commission errors. Therefore, omission errors were still detected in the damaged or leaf-covered holes.
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spelling doaj-art-e4b277b198234cd79a814aa2198621bc2025-09-16T14:41:04ZengUniversitas Pendidikan GaneshaJurnal Nasional Pendidikan Teknik Informatika (JANAPATI)2089-86732548-42652023-07-0112210.23887/janapati.v12i2.60628Hole Detection in Plastic Mulch Using Template Matching and Machine Learning AlgorithmsAbdul Aziz0Yandra Arkeman1Wisnu Ananta Kusuma2Farohaji Kurniawan3IPB UniversityIPB UniversityIPB UniversityNational Research and Innovation Agency Mulch is a ground cover material to maintain soil moisture and temperature stability as a plant medium. Mulch also helps prevent weed growth for better plant growth. For planting with plastic mulch, farmers need to make holes in the mulch the day before planting. Precision agriculture is needed because it can obtain savings in input financing, labor, and better yields, so this research aims to identify holes in mulch based on Unmanned Aerial Vehicle images. The advantage of this research is that it can monitor each plant based on the mulch holes, and the number of holes identified can be used as a parameter to estimate the amount of crop production. This research combines Template Matching Algorithm and Machine Learning Algorithm to improve accuracy in predicting holes in mulch. Three machine learning algorithms are used, namely the Random Forest, Support Vector Machine, and XGBoost. The data used is an orthophoto mosaic from aerial photographs. Nine areas were taken from orthophotos to be used as research samples. The results of this study obtained the highest average recall, precision, and f-measure values using the Support Vector Machine algorithm with a recall value of 87.7%, precision of 97.5%, and f-score of 92.3%. This research focuses on reducing detected commission errors. Therefore, omission errors were still detected in the damaged or leaf-covered holes. https://ejournal.undiksha.ac.id/index.php/janapati/article/view/60628DetectionMulchTemplate MatchingMachine Learning
spellingShingle Abdul Aziz
Yandra Arkeman
Wisnu Ananta Kusuma
Farohaji Kurniawan
Hole Detection in Plastic Mulch Using Template Matching and Machine Learning Algorithms
Detection
Mulch
Template Matching
Machine Learning
title Hole Detection in Plastic Mulch Using Template Matching and Machine Learning Algorithms
title_full Hole Detection in Plastic Mulch Using Template Matching and Machine Learning Algorithms
title_fullStr Hole Detection in Plastic Mulch Using Template Matching and Machine Learning Algorithms
title_full_unstemmed Hole Detection in Plastic Mulch Using Template Matching and Machine Learning Algorithms
title_short Hole Detection in Plastic Mulch Using Template Matching and Machine Learning Algorithms
title_sort hole detection in plastic mulch using template matching and machine learning algorithms
topic Detection
Mulch
Template Matching
Machine Learning
url https://ejournal.undiksha.ac.id/index.php/janapati/article/view/60628
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AT yandraarkeman holedetectioninplasticmulchusingtemplatematchingandmachinelearningalgorithms
AT wisnuanantakusuma holedetectioninplasticmulchusingtemplatematchingandmachinelearningalgorithms
AT farohajikurniawan holedetectioninplasticmulchusingtemplatematchingandmachinelearningalgorithms