4.7 Article

Growing status observation for oil palm trees using Unmanned Aerial Vehicle (UAV) images

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DOI: 10.1016/j.isprsjprs.2021.01.008

关键词

Individual tree detection; Growing status; Oil palm; UAV images; Deep learning

资金

  1. National Key Research and Development Plan of China [2017YFA0604500, 2017YFB0202204, 2017YFA0604401, 2019YFA0606601]
  2. National Natural Science Foundation of China [51761135015, U1839206]
  3. National Key Scientific and Technological Infrastructure project Earth System Science Numerical Simulator Facility (EarthLab)
  4. Center for High Performance Computing and System Simulation, Pilot National Laboratory for Marine Science and Technology (Qingdao)

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The rapid expansion of oil palm plantations in tropical developing countries has both positive economic benefit and negative ecological impact. Accurate detection of oil palm trees is crucial for improving plantation planning, yield, and reducing manpower and fertilizer consumption. The use of Unmanned Aerial Vehicles (UAVs) shows promise for monitoring individual oil palms, but challenges remain in achieving accuracy due to class imbalance and similarity. The Multi-class Oil Palm Detection approach (MOPAD) proposed in this paper utilizes advanced features and loss modules to achieve accurate detection and monitoring of individual oil palms, demonstrating excellent potential for efficient management.
For both the positive economic benefit and the negative ecological impact of the rapid expansion of oil palm plantations in tropical developing countries, it is significant to achieve accurate detection for oil palm trees in large-scale areas. Especially, growing status observation and smart oil palm plantation management enabled by such accurate detections would improve plantation planning, oil palm yield, and reduce manpower and consumption of fertilizer. Although existing studies have already reached a high accuracy in oil palm tree detection, rare attention has been paid to automated observation of each single oil palm tree's growing status. Nowadays, with its high spatial resolution and low cost, Unmanned Aerial Vehicle (UAV) has become a promising tool for monitoring the growing status of individual oil palms. However, the accuracy is still a challenging issue because of the extreme imbalance and high similarity between different classes. In this paper, we propose a Multi-class Oil PAlm Detection approach (MOPAD) to reap both accurate detection of oil palm trees and accurate monitoring of their growing status. Based on Faster RCNN, MOPAD combines a Refined Pyramid Feature (RPF) module and a hybrid class-balanced loss module to achieve satisfying observation of the growing status for individual oil palms. The former takes advantage of multi-level features to distinguish similar classes and detect small oil palms, and the latter effectively resolves the problem of extremely imbalanced samples. Moreover, we elaborately analyze the distribution of different kinds of oil palms, and propose a practical workflow for detecting oil palm vacancy. We evaluate MOPAD using three large-scale UAV images photographed in two sites in Indonesia (denoted by Site 1 and Site 2), containing 363,877 oil palms of five categories: healthy palms, dead palms, mismanaged palms, smallish palms and yellowish palms. Our proposed MOPAD achieves an F1-score of 87.91% (Site 1) and 99.04% (Site 2) for overall oil palm tree detection, and outperforms other state-of-the-art object detection methods by a remarkable margin of 10.37-17.09% and 8.14%-21.32% with respect to the average F1score for multi-class oil palm detection in Site 1 and Site 2, respectively. Our method demonstrates excellent potential for individual oil palm tree detection and observation of growing status from UAV images, leading to more precise and efficient management of oil palm plantations.

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