Abstract

The rapid expansion of oil palm is a major driver of deforestation and other associated damage to the climate and ecosystem in tropical regions, especially Southeast Asia. It is therefore necessary to precisely detect and monitor oil palm plantations to safeguard the ecosystem services and biodiversity of tropical forests. Compared with optical data, which are vulnerable to cloud cover, the Sentinel-1 dual-polarization C-band synthetic aperture radar (SAR) acquires global observations under all weather conditions and times of day and shows good performance for oil palm detection in the humid tropics. However, because accurately distinguishing mature and young oil palm trees by using optical and SAR data is difficult and considering the strong dependence on the input parameter values when detecting oil palm plantations by employing existing classification algorithms, we propose an innovative method to improve the accuracy of classifying the oil palm type (mature or young) and detecting the oil palm planting area in Sumatra by fusing Landsat-8 and Sentinel-1 images. We extract multitemporal spectral characteristics, SAR backscattering values, vegetation indices, and texture features to establish different feature combinations. Then, we use the random forest algorithm based on improved grid search optimization (IGSO-RF) and select optimal feature subsets to establish a classification model and detect oil palm plantations. Based on the IGSO-RF classifier and optimal features, our method improved the oil palm detection accuracy and obtained the best model performance (OA = 96.08% and kappa = 0.9462). Moreover, the contributions of different features to oil palm detection are different; nevertheless, the optimal feature subset performed the best and demonstrated good potential for the detection of oil palm plantations.

Highlights

  • In these groups of feature combinations, the features of groups IV were the most relevant features derived from improved grid search optimization (IGSO)-random forest (RF) model

  • These groups of feature combinations were input into the IGSO-RF classification model for oil palm detection

  • This study developed an innovative method to improve the detection accuracy of mature and young oil palm by using the IGSO-RF classification model and the selection of optimal features with the fusion of Landsat-8 and Sentinel-1 images

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Summary

Introduction

Oil palm (Elaeis guineensis), whose planting areas are distributed mainly in humid tropical countries such as Indonesia, is one of the most rapidly expanding and productive equatorial crops in the world [1]. Because this crop has multiple uses, high yields, and low production costs, the global demand for palm oil has increased exponentially over the last few decades, generating considerable economic benefits in local areas [2]. To scientifically manage and supervise this activity and to safeguard forests beneficial for the global climate and ecosystem services, it is necessary to precisely detect and monitor oil palm plantations

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