CVAILGSep 24, 2024

Fields of The World: A Machine Learning Benchmark Dataset For Global Agricultural Field Boundary Segmentation

arXiv:2409.16252v228 citationsh-index: 20
AI Analysis

This provides a foundational dataset for improving agricultural monitoring globally, though it is incremental as it builds on existing segmentation methods.

The authors tackled the lack of a diverse global dataset for agricultural field boundary segmentation by creating Fields of The World (FTW), a benchmark dataset with 70,462 samples across 24 countries, and showed that models trained on it achieve better zero-shot and fine-tuning performance in held-out countries.

Crop field boundaries are foundational datasets for agricultural monitoring and assessments but are expensive to collect manually. Machine learning (ML) methods for automatically extracting field boundaries from remotely sensed images could help realize the demand for these datasets at a global scale. However, current ML methods for field instance segmentation lack sufficient geographic coverage, accuracy, and generalization capabilities. Further, research on improving ML methods is restricted by the lack of labeled datasets representing the diversity of global agricultural fields. We present Fields of The World (FTW) -- a novel ML benchmark dataset for agricultural field instance segmentation spanning 24 countries on four continents (Europe, Africa, Asia, and South America). FTW is an order of magnitude larger than previous datasets with 70,462 samples, each containing instance and semantic segmentation masks paired with multi-date, multi-spectral Sentinel-2 satellite images. We provide results from baseline models for the new FTW benchmark, show that models trained on FTW have better zero-shot and fine-tuning performance in held-out countries than models that aren't pre-trained with diverse datasets, and show positive qualitative zero-shot results of FTW models in a real-world scenario -- running on Sentinel-2 scenes over Ethiopia.

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