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Main Authors: Lavreniuk, Mykola, Kussul, Nataliia, Shelestov, Andrii, Yailymov, Bohdan, Salii, Yevhenii, Kuzin, Volodymyr, Szantoi, Zoltan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.02534
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author Lavreniuk, Mykola
Kussul, Nataliia
Shelestov, Andrii
Yailymov, Bohdan
Salii, Yevhenii
Kuzin, Volodymyr
Szantoi, Zoltan
author_facet Lavreniuk, Mykola
Kussul, Nataliia
Shelestov, Andrii
Yailymov, Bohdan
Salii, Yevhenii
Kuzin, Volodymyr
Szantoi, Zoltan
contents The accurate delineation of agricultural field boundaries from satellite imagery is vital for land management and crop monitoring. However, current methods face challenges due to limited dataset sizes, resolution discrepancies, and diverse environmental conditions. We address this by reformulating the task as instance segmentation and introducing the Field Boundary Instance Segmentation - 22M dataset (FBIS-22M), a large-scale, multi-resolution dataset comprising 672,909 high-resolution satellite image patches (ranging from 0.25 m to 10 m) and 22,926,427 instance masks of individual fields, significantly narrowing the gap between agricultural datasets and those in other computer vision domains. We further propose Delineate Anything, an instance segmentation model trained on our new FBIS-22M dataset. Our proposed model sets a new state-of-the-art, achieving a substantial improvement of 88.5% in mAP@0.5 and 103% in mAP@0.5:0.95 over existing methods, while also demonstrating significantly faster inference and strong zero-shot generalization across diverse image resolutions and unseen geographic regions. Code, pre-trained models, and the FBIS-22M dataset are available at https://lavreniuk.github.io/Delineate-Anything.
format Preprint
id arxiv_https___arxiv_org_abs_2504_02534
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Delineate Anything: Resolution-Agnostic Field Boundary Delineation on Satellite Imagery
Lavreniuk, Mykola
Kussul, Nataliia
Shelestov, Andrii
Yailymov, Bohdan
Salii, Yevhenii
Kuzin, Volodymyr
Szantoi, Zoltan
Computer Vision and Pattern Recognition
The accurate delineation of agricultural field boundaries from satellite imagery is vital for land management and crop monitoring. However, current methods face challenges due to limited dataset sizes, resolution discrepancies, and diverse environmental conditions. We address this by reformulating the task as instance segmentation and introducing the Field Boundary Instance Segmentation - 22M dataset (FBIS-22M), a large-scale, multi-resolution dataset comprising 672,909 high-resolution satellite image patches (ranging from 0.25 m to 10 m) and 22,926,427 instance masks of individual fields, significantly narrowing the gap between agricultural datasets and those in other computer vision domains. We further propose Delineate Anything, an instance segmentation model trained on our new FBIS-22M dataset. Our proposed model sets a new state-of-the-art, achieving a substantial improvement of 88.5% in mAP@0.5 and 103% in mAP@0.5:0.95 over existing methods, while also demonstrating significantly faster inference and strong zero-shot generalization across diverse image resolutions and unseen geographic regions. Code, pre-trained models, and the FBIS-22M dataset are available at https://lavreniuk.github.io/Delineate-Anything.
title Delineate Anything: Resolution-Agnostic Field Boundary Delineation on Satellite Imagery
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.02534