TL;DR
The paper introduces DelAnyFlow, a fast, scalable, and accurate method for delineating agricultural field boundaries from satellite imagery, outperforming existing solutions and enabling large-scale land management applications.
Contribution
It presents a novel, resolution-agnostic approach combining a new instance segmentation model trained on a large dataset, with post-processing for national-scale field boundary mapping.
Findings
DelAnyFlow achieves over 100% higher mAP and 400x faster inference than SAM2.
It successfully delineates over 3.75 million fields in Ukraine within six hours.
Outputs significantly improve boundary completeness over existing operational products.
Abstract
Accurate delineation of agricultural field boundaries from satellite imagery is essential for land management and crop monitoring, yet existing methods often produce incomplete boundaries, merge adjacent fields, and struggle to scale. We present the Delineate Anything Flow (DelAnyFlow) methodology, a resolution-agnostic approach for large-scale field boundary mapping. DelAnyFlow combines the DelAny instance segmentation model, based on a YOLOv11 backbone and trained on the large-scale Field Boundary Instance Segmentation-22M (FBIS 22M) dataset, with a structured post-processing, merging, vectorization, and simplification to generate vector boundaries. FBIS 22M, the largest dataset of its kind, contains 672,909 multi-resolution image patches (0.25-10m) and 22.9million validated field instances. The DelAny model delivers state-of-the-art accuracy with over 100% higher mAP and 400x faster…
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