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Deep Learning Model for Automatic Detection of Oil Palm Trees in Indonesia with YOLO-V5

Published: 27 December 2023 Publication History

Abstract

Indonesia is one of the world's largest palm oil producers. The area of oil palm plantations in Indonesia is increasing every year. However, large-scale land clearing for oil palm plantations is considered a cause of deforestation, negatively impacting the environment and society. Therefore, it is necessary to manage plantations sustainably, preserving forests and biodiversity. One solution to this problem is applying remote sensing technology that remotely monitors the ages and health levels of trees in oil palm plantations. In this fashion, trees detected as unproductive can be immediately replaced with new ones without having to clear new land again. There are three approaches to remote tree detection from previous studies: classical digital image processing, classical machine learning, and deep learning. Deep learning is an approach that is currently widely applied to object detection because of its accuracy and speed. This study proposes a deep-learning-based approach to detect oil palm trees by remote sensing using the RGB feature. This research consists of several stages: data collection, bounding box annotation, train/test split, model training, and evaluation. The data were acquired from an oil palm plantation in Kalimantan, Indonesia. The object-detection-based deep learning method was YOLO Version 5 (YOLO-V5). In this study, we compared all YOLO-V5 network models, namely, YOLO-V5s (small), YOLO-V5m (medium), YOLO-V5l (large), and YOLO-V5x (extra-large). The oil palm tree detection model with the highest evaluation metric used YOLO-V5s (YOLO-V5 small network) with a batch size of 32, i.e., the values of mAP50, mAP@[0.5, 0.95], and F1-Score respectively were 0.851, 0.457, and 0.785. This is preliminary research that is expected to continue to be developed so that it becomes a robust model for detecting oil palm trees in Indonesia and can be implemented in real-time on GIS software and drones.

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Cited By

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  • (2024)Application of YOLO11 Algorithm for Rotating Small Object Detection in Remote Sensing ImagesProceedings of the 2024 International Conference on Mathematics and Machine Learning10.1145/3708360.3708373(79-84)Online publication date: 8-Nov-2024
  • (2024)Real-time estrus detection in cattle using deep learning-based pose estimationBIO Web of Conferences10.1051/bioconf/202412304009123(04009)Online publication date: 30-Aug-2024

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            SIET '23: Proceedings of the 8th International Conference on Sustainable Information Engineering and Technology
            October 2023
            722 pages
            ISBN:9798400708503
            DOI:10.1145/3626641
            Publication rights licensed to ACM. ACM acknowledges that this contribution was authored or co-authored by an employee, contractor or affiliate of a national government. As such, the Government retains a nonexclusive, royalty-free right to publish or reproduce this article, or to allow others to do so, for Government purposes only.

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            Published: 27 December 2023

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            Author Tags

            1. YOLO
            2. deep learning
            3. object detection
            4. oil palm trees
            5. remote sensing

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            View all
            • (2024)Application of YOLO11 Algorithm for Rotating Small Object Detection in Remote Sensing ImagesProceedings of the 2024 International Conference on Mathematics and Machine Learning10.1145/3708360.3708373(79-84)Online publication date: 8-Nov-2024
            • (2024)Real-time estrus detection in cattle using deep learning-based pose estimationBIO Web of Conferences10.1051/bioconf/202412304009123(04009)Online publication date: 30-Aug-2024

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