CVLGMar 28

PRUE: A Practical Recipe for Field Boundary Segmentation at Scale

arXiv:2603.2710135.51 citationsh-index: 8
AI Analysis

For agricultural monitoring, this work provides a reliable and scalable method for field boundary delineation, outperforming existing models and releasing datasets for five countries.

The paper presents a practical recipe for field boundary segmentation at scale, achieving 76% IoU and 47% object-F1 on the FTW benchmark, outperforming previous baselines by 6% and 9% respectively.

Large-scale maps of field boundaries are essential for agricultural monitoring tasks. Existing deep learning approaches for satellite-based field mapping are sensitive to illumination, spatial scale, and changes in geographic location. We conduct the first systematic evaluation of segmentation and geospatial foundation models (GFMs) for global field boundary delineation using the Fields of The World (FTW) benchmark. We evaluate 18 models under unified experimental settings, showing that a U-Net semantic segmentation model outperforms instance-based and GFM alternatives on a suite of performance and deployment metrics. We propose a new segmentation approach that combines a U-Net backbone, composite loss functions, and targeted data augmentations to enhance performance and robustness under real-world conditions. Our model achieves a 76\% IoU and 47\% object-F1 on FTW, an increase of 6\% and 9\% over the previous baseline. Our approach provides a practical framework for reliable, scalable, and reproducible field boundary delineation across model design, training, and inference. We release all models and model-derived field boundary datasets for five countries.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes