Publication detail

Spectral–Spatial Transformer-based Semantic Segmentation for Large-scale Mapping of Individual Date Palm Trees using Very High-resolution Satellite Data

AL-RUZOUQ, R. GIBRIL, M. SHANABLEH, A. BOLCEK, J. LAMGHARI, F. HAMMOUR, N. AL-KEBLAWY, A. JENA, R.

Original Title

Spectral–Spatial Transformer-based Semantic Segmentation for Large-scale Mapping of Individual Date Palm Trees using Very High-resolution Satellite Data

Type

journal article in Scopus

Language

English

Original Abstract

Date palm plantations in the United Arab Emirates (UAE) are under threat from soil salinity, drought, and date palm weevils. Accordingly, monitoring and conserving date palms are crucial to preserving a vital component of the country’s agricultural heritage, economy, food security, and ecological balance. Previous studies have effectively identified date palm trees using RGB-based aerial and UAV imagery utilizing diverse deep learning methods. However, the utilization of very high-resolution satellite data for delineating individual date palm crowns remains unexplored due to the limited spatial resolution capabilities of existing satellite systems. This study primarily aimed to achieve precise and comprehensive mapping of date palm trees using WorldView-3 (WV-3) satellite data by leveraging the high representational power of the state-of-the-art vision transformers (ViT) in capturing global information from the input data. First, an in-depth analysis assessment of the various transformer-based semantic segmentation architectures, including UperNet with vision transformer and Swin transformer, SegFormer, Mask2Former, and UniFormer, was conducted. Second, the integration of spectral data on the performance of ViTs was evaluated. Moreover, the models’ generalizability and complexity effect on the segmentation effectiveness were assessed. Accordingly, a postprocessing strategy was developed to aid in delineating and counting date palm trees from semantic segmentation outputs. Results demonstrated that integration of WV-3 spectral data into the analysis resulted in a marked improvement in segmentation quality. The UniFormer, UperNet-Swin, and Mask2Former models demonstrated considerable improvements in multispectral data analysis, with increases in mean intersection over union (mIoU) of 2.17% (77.88% mIoU, 86.01% mean F-score [mF-score]), 2% (78.10% mIoU, 86.18% mF-score), and 1.15% (77.36% mIoU, 85.59% mF-score), respectively, compared with their RGB-based results. Evaluations of model transferability also indicated that Mask2Former, UniFormer, and UperNet-Swin transformers efficiently adapted to multispectral data in the Dibba region. These models achieved mIoU scores of 84.36%, 84.25%, and 83.17% and mF-scores of 90.95%, 90.87%, and 90.13%, highlighting their effectiveness and potential for broader regional application. This research highlights the efficacy and feasibility of using ViTs with WV-3 multispectral data for accurate and comprehensive surveying of date palm plantations, enabling the development of palm tree inventories and continuously updating geospatial databases.

Keywords

tree crown delineation, semantic segmentation, vision transformers, deep learning

Authors

AL-RUZOUQ, R.; GIBRIL, M.; SHANABLEH, A.; BOLCEK, J.; LAMGHARI, F.; HAMMOUR, N.; AL-KEBLAWY, A.; JENA, R.

Released

8. 5. 2024

Publisher

Ecological Indicators

ISBN

1872-7034

Periodical

ECOLOGICAL INDICATORS

Year of study

163

Number

112110

State

Kingdom of the Netherlands

Pages count

18

URL

BibTex

@article{BUT188529,
  author="Rami {Al-Ruzouq} and Mohamed Barakat A. {Gibril} and Abdallah {Shanableh} and Jan {Bolcek} and Fouad {Lamghari} and Nezar Atalla {Hammour} and Ali {Al-Keblawy} and Ratiranjan {Jena}",
  title="Spectral–Spatial Transformer-based Semantic Segmentation for Large-scale Mapping of Individual Date Palm Trees using Very High-resolution Satellite Data",
  journal="ECOLOGICAL INDICATORS",
  year="2024",
  volume="163",
  number="112110",
  pages="18",
  doi="10.1016/j.ecolind.2024.112110",
  issn="1872-7034",
  url="https://www.sciencedirect.com/science/article/pii/S1470160X24005673"
}