TY - GEN
T1 - Oil palm mapping based on machine learning and non-machine learning approach using Sentinel-2 imagery
AU - Rosyidy, Muhamad Khairul
AU - Wibowo, Adi
AU - Sidiq, Iqbal Putut Ash
N1 - Publisher Copyright:
© 2023 Author(s).
PY - 2023/2/21
Y1 - 2023/2/21
N2 - Oil palm is a plantation commodity that has high economic value and investment opportunities. Mapping oil palm areas is important to determine the extent and location of oil palm distribution to improve the region's economy. This study aims to map oil palm land cover using the machine learning approach (Decision Tree (DT) and Support Vector Machine (SVM)) and non-machine learning approach (Maximum Likelihood Classifier (MLC)) and to extract other land covers, such as built-up areas, fields, water bodies, and other Vegetation. The Sentinel 2A satellite imagery data is used with a spatial resolution of 10 meters to monitor objects above the earth's surface on a large scale. The results show that the three methods can map the oil palm area with an overall accuracy above 90% and kappa value of 0.66 for Decision Tree, 0.94 for Support Vector Machine methods, and 0.92 for Maximum Likelihood Classification. The conclusion is that the total area of mapped oil palm is 1073.88 Ha (Decision Tree), 936.64 Ha (MLC), and 1204.56 Ha (SVM). This study shows that the accuracy of the machine learning approach using the SVM method is higher for oil palm mapping.
AB - Oil palm is a plantation commodity that has high economic value and investment opportunities. Mapping oil palm areas is important to determine the extent and location of oil palm distribution to improve the region's economy. This study aims to map oil palm land cover using the machine learning approach (Decision Tree (DT) and Support Vector Machine (SVM)) and non-machine learning approach (Maximum Likelihood Classifier (MLC)) and to extract other land covers, such as built-up areas, fields, water bodies, and other Vegetation. The Sentinel 2A satellite imagery data is used with a spatial resolution of 10 meters to monitor objects above the earth's surface on a large scale. The results show that the three methods can map the oil palm area with an overall accuracy above 90% and kappa value of 0.66 for Decision Tree, 0.94 for Support Vector Machine methods, and 0.92 for Maximum Likelihood Classification. The conclusion is that the total area of mapped oil palm is 1073.88 Ha (Decision Tree), 936.64 Ha (MLC), and 1204.56 Ha (SVM). This study shows that the accuracy of the machine learning approach using the SVM method is higher for oil palm mapping.
UR - http://www.scopus.com/inward/record.url?scp=85149952843&partnerID=8YFLogxK
U2 - 10.1063/5.0114333
DO - 10.1063/5.0114333
M3 - Conference contribution
AN - SCOPUS:85149952843
T3 - AIP Conference Proceedings
BT - 3rd International Conference on Engineering, Technology and Innovative Researches
A2 - Kurniawan, Yogiek Indra
A2 - Fadli, Ari
A2 - Saputro, Dani Nugroho
A2 - Hardini, Probo
A2 - Aditama, Maulana Rizkia
A2 - Sofiana, Amanda
A2 - Sibarani, Ayu Anggraeni
PB - American Institute of Physics Inc.
T2 - 3rd International Conference on Engineering, Technology and Innovative Researches, ICETIR 2021
Y2 - 1 September 2021
ER -