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Biological Valuation Map of Flanders: A Sentinel-2 Imagery Analysis (2401.15223v1)

Published 26 Jan 2024 in cs.CV and cs.LG

Abstract: In recent years, machine learning has become crucial in remote sensing analysis, particularly in the domain of Land-use/Land-cover (LULC). The synergy of machine learning and satellite imagery analysis has demonstrated significant productivity in this field, as evidenced by several studies. A notable challenge within this area is the semantic segmentation mapping of land usage over extensive territories, where the accessibility of accurate land-use data and the reliability of ground truth land-use labels pose significant difficulties. For example, providing a detailed and accurate pixel-wise labeled dataset of the Flanders region, a first-level administrative division of Belgium, can be particularly insightful. Yet there is a notable lack of regulated, formalized datasets and workflows for such studies in many regions globally. This paper introduces a comprehensive approach to addressing these gaps. We present a densely labeled ground truth map of Flanders paired with Sentinel-2 satellite imagery. Our methodology includes a formalized dataset division and sampling method, utilizing the topographic map layout 'Kaartbladversnijdingen,' and a detailed semantic segmentation model training pipeline. Preliminary benchmarking results are also provided to demonstrate the efficacy of our approach.

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References (14)
  1. “Dense semantic labeling of subdecimeter resolution images with convolutional neural networks,” IEEE Transactions on Geoscience and Remote Sensing, 2017.
  2. “Deep learning in remote sensing applications: A meta-analysis and review,” Isprs Journal of Photogrammetry and Remote Sensing, 2019.
  3. “Deep learning in environmental remote sensing: Achievements and challenges,” Remote Sensing of Environment, 2020.
  4. “Deep learning in remote sensing: A comprehensive review and list of resources,” IEEE Geoscience and Remote Sensing Magazine, 2017.
  5. “Fully convolutional networks for semantic segmentation,” IEEE Transactions on Pattern Analysis and Machine Intelligence, 2017.
  6. “U-net: Convolutional networks for biomedical image segmentation,” Lecture Notes in Computer Science, 2015.
  7. “Unet++: A nested u-net architecture for medical image segmentation,” Lecture Notes in Computer Science, 2018.
  8. “3d u-net: Learning dense volumetric segmentation from sparse annotation,” Medical Image Computing and Computer Assisted Intervention, 2016.
  9. “Sentinel-2: Esa’s optical high-resolution mission for gmes operational services,” Remote Sensing of Environment, 2012.
  10. “The openEO API: Harmonising the use of earth observation cloud services using virtual data cube functionalities,” Remote Sensing, vol. 13, no. 6, 2021.
  11. Biologische Waarderingskaart en Natura 2000 Habitatkaart, uitgave 2023, Number 31 in Rapporten van het Instituut voor Natuur- en Bosonderzoek. Instituut voor Natuur- en Bosonderzoek, België, 2023.
  12. “The biological valuation map (BVM): a field-driven survey of land cover and vegetation in the Flemish region of Belgium,” Documents Phytosociologiques, , no. 6, pp. 373–382, 2018.
  13. “Imagenet large scale visual recognition challenge,” International Journal of Computer Vision, 2015.
  14. “Scaling laws for neural language models,” arXiv: Learning, 2020.

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