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Main Authors: Kuapanich, Nuttaset, Zheng, Juepeng, Shi, Bohan, Liu, Jiaying, Jiang, Jiayin, Huang, Jiatao, Tan, Shenghan, Li, Qingmei, Fu, Haohuan
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.23776
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author Kuapanich, Nuttaset
Zheng, Juepeng
Shi, Bohan
Liu, Jiaying
Jiang, Jiayin
Huang, Jiatao
Tan, Shenghan
Li, Qingmei
Fu, Haohuan
author_facet Kuapanich, Nuttaset
Zheng, Juepeng
Shi, Bohan
Liu, Jiaying
Jiang, Jiayin
Huang, Jiatao
Tan, Shenghan
Li, Qingmei
Fu, Haohuan
contents Accurate monitoring of oil palm plantations is critical for balancing economic development with environmental conservation in Southeast Asia. However, existing plantation maps often suffer from low spatial resolution and a lack of recent temporal coverage, impeding effective surveillance of rapid land-use changes. In this study, we propose a deep learning framework to generate 10-meter resolution oil palm plantation maps for Indonesia and Malaysia from 2020 to 2024, utilizing Sentinel-2 imagery without requiring new manual annotations. To address the resolution mismatch between coarse 100-meter historical labels and 10-meter imagery, we employ a U-Net architecture optimized with Determinant-based Mutual Information (DMI). This approach effectively mitigates the influence of label noise. We validated our method against 2,058 manually verified points, achieving overall accuracies of 70.64%, 63.53%, and 60.06% for the years 2020, 2022, and 2024, respectively. Our comprehensive analysis reveals that oil palm coverage in the region peaked in 2022 before experiencing a decline in 2024. Furthermore, land cover transition analysis highlights a concerning trajectory of plantation expansion into flooded vegetation areas, despite a general stabilization in rotations with other crop types. These high-resolution maps provide essential data for monitoring sustainability commitments and deforestation dynamics in the region, and the generated datasets are made publicly available at https://doi.org/10.5281/zenodo.17768444.
format Preprint
id arxiv_https___arxiv_org_abs_2604_23776
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle From Noisy Historical Maps to Time-Series Oil Palm Mapping Without Annotation in Malaysia and Indonesia (2020-2024)
Kuapanich, Nuttaset
Zheng, Juepeng
Shi, Bohan
Liu, Jiaying
Jiang, Jiayin
Huang, Jiatao
Tan, Shenghan
Li, Qingmei
Fu, Haohuan
Computer Vision and Pattern Recognition
Artificial Intelligence
Accurate monitoring of oil palm plantations is critical for balancing economic development with environmental conservation in Southeast Asia. However, existing plantation maps often suffer from low spatial resolution and a lack of recent temporal coverage, impeding effective surveillance of rapid land-use changes. In this study, we propose a deep learning framework to generate 10-meter resolution oil palm plantation maps for Indonesia and Malaysia from 2020 to 2024, utilizing Sentinel-2 imagery without requiring new manual annotations. To address the resolution mismatch between coarse 100-meter historical labels and 10-meter imagery, we employ a U-Net architecture optimized with Determinant-based Mutual Information (DMI). This approach effectively mitigates the influence of label noise. We validated our method against 2,058 manually verified points, achieving overall accuracies of 70.64%, 63.53%, and 60.06% for the years 2020, 2022, and 2024, respectively. Our comprehensive analysis reveals that oil palm coverage in the region peaked in 2022 before experiencing a decline in 2024. Furthermore, land cover transition analysis highlights a concerning trajectory of plantation expansion into flooded vegetation areas, despite a general stabilization in rotations with other crop types. These high-resolution maps provide essential data for monitoring sustainability commitments and deforestation dynamics in the region, and the generated datasets are made publicly available at https://doi.org/10.5281/zenodo.17768444.
title From Noisy Historical Maps to Time-Series Oil Palm Mapping Without Annotation in Malaysia and Indonesia (2020-2024)
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2604.23776