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Auteurs principaux: Conserva, Michelangelo, Wilson, Alex, Stanton, Charlotte, Batchu, Vishal, Gulshan, Varun
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2506.13993
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author Conserva, Michelangelo
Wilson, Alex
Stanton, Charlotte
Batchu, Vishal
Gulshan, Varun
author_facet Conserva, Michelangelo
Wilson, Alex
Stanton, Charlotte
Batchu, Vishal
Gulshan, Varun
contents Effective management of agricultural landscapes is critical for meeting global biodiversity targets, but efforts are hampered by the absence of detailed, large-scale ecological maps. To address this, we introduce Farmscapes, the first large-scale (covering most of England), high-resolution (25cm) map of rural landscape features, including ecologically vital elements like hedgerows, woodlands, and stone walls. This map was generated using a deep learning segmentation model trained on a novel, dataset of 942 manually annotated tiles derived from aerial imagery. Our model accurately identifies key habitats, achieving high f1-scores for woodland (96\%) and farmed land (95\%), and demonstrates strong capability in segmenting linear features, with an F1-score of 72\% for hedgerows. By releasing the England-wide map on Google Earth Engine, we provide a powerful, open-access tool for ecologists and policymakers. This work enables data-driven planning for habitat restoration, supports the monitoring of initiatives like the EU Biodiversity Strategy, and lays the foundation for advanced analysis of landscape connectivity.
format Preprint
id arxiv_https___arxiv_org_abs_2506_13993
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Mapping Farmed Landscapes from Remote Sensing
Conserva, Michelangelo
Wilson, Alex
Stanton, Charlotte
Batchu, Vishal
Gulshan, Varun
Computer Vision and Pattern Recognition
Machine Learning
Effective management of agricultural landscapes is critical for meeting global biodiversity targets, but efforts are hampered by the absence of detailed, large-scale ecological maps. To address this, we introduce Farmscapes, the first large-scale (covering most of England), high-resolution (25cm) map of rural landscape features, including ecologically vital elements like hedgerows, woodlands, and stone walls. This map was generated using a deep learning segmentation model trained on a novel, dataset of 942 manually annotated tiles derived from aerial imagery. Our model accurately identifies key habitats, achieving high f1-scores for woodland (96\%) and farmed land (95\%), and demonstrates strong capability in segmenting linear features, with an F1-score of 72\% for hedgerows. By releasing the England-wide map on Google Earth Engine, we provide a powerful, open-access tool for ecologists and policymakers. This work enables data-driven planning for habitat restoration, supports the monitoring of initiatives like the EU Biodiversity Strategy, and lays the foundation for advanced analysis of landscape connectivity.
title Mapping Farmed Landscapes from Remote Sensing
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2506.13993