Abstract

Large-scale mapping of date palm trees is vital for their consistent monitoring and sustainable management, considering their substantial commercial, environmental, and cultural value. This study presents an automatic approach for the large-scale mapping of date palm trees from very-high-spatial-resolution (VHSR) unmanned aerial vehicle (UAV) datasets, based on a deep learning approach. A U-Shape convolutional neural network (U-Net), based on a deep residual learning framework, was developed for the semantic segmentation of date palm trees. A comprehensive set of labeled data was established to enable the training and evaluation of the proposed segmentation model and increase its generalization capability. The performance of the proposed approach was compared with those of various state-of-the-art fully convolutional networks (FCNs) with different encoder architectures, including U-Net (based on VGG-16 backbone), pyramid scene parsing network, and two variants of DeepLab V3+. Experimental results showed that the proposed model outperformed other FCNs in the validation and testing datasets. The generalizability evaluation of the proposed approach on a comprehensive and complex testing dataset exhibited higher classification accuracy and showed that date palm trees could be automatically mapped from VHSR UAV images with an F-score, mean intersection over union, precision, and recall of 91%, 85%, 0.91, and 0.92, respectively. The proposed approach provides an efficient deep learning architecture for the automatic mapping of date palm trees from VHSR UAV-based images.

Highlights

  • The current study aims to (1) develop a deep semantic segmentation method based on U-Shape convolutional network (U-Net) architecture and a pre-trained deep residual network for large-scale mapping of date palm trees; (2) establish a comprehensive and versatile labeled dataset to support the development of the proposed semantic segmentation model for date palm trees from very-high spatial resolution unmanned aerial vehicle (UAV) images; (3) compare the performance of the proposed approach with those of different state-of-the-art semantic segmentation networks

  • residual learning network (ResNet)-50) for mapping date palm trees was compared with different state-of-the-art fully convolutional networks, including U-Shape convolutional neural network (U-Net) (VGG-16 backbone network), DeepLab

  • This study presented an automatic approach for the large-scale mapping of date palm trees from VHSR UAV images based on a deep semantic segmentation model

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Summary

Introduction

The date palm tree (Phoenix dactylifera L.) is one of the oldest perennial fruit trees [1]. Has been one of the most cultivated fruit trees since the Neolithic/Early Bronze Age [2]. The palm tree has unique and recognized characteristics, including a single trunk, palm leaves, and fronds. The crown of a date palm tree is densely covered with long pinnate leaves, which vary with the age of the tree and environmental conditions and can be as long as 4 m, on average [3]. The average height of date palm trees typically ranges from 15 m to 25 m [4]. Date palm trees can generally be grown in arid and semi-arid environments and are planted extensively on the Arabian Peninsula, in West Asia, and Remote Sens.

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