TL;DR
IrrMap is a large, diverse satellite imagery dataset with auxiliary data for irrigation method mapping, enabling advanced ML research and analysis in agricultural water management across the western U.S.
Contribution
This paper introduces IrrMap, the first extensive dataset combining satellite imagery and auxiliary data for irrigation mapping, along with a pipeline for dataset generation and analysis tools.
Findings
Analyzed irrigation method distribution across crop groups.
Examined spatial irrigation patterns using Shannon diversity indices.
Assessed variations in irrigated areas across regions and resolutions.
Abstract
We introduce IrrMap, the first large-scale dataset (1.1 million patches) for irrigation method mapping across regions. IrrMap consists of multi-resolution satellite imagery from LandSat and Sentinel, along with key auxiliary data such as crop type, land use, and vegetation indices. The dataset spans 1,687,899 farms and 14,117,330 acres across multiple western U.S. states from 2013 to 2023, providing a rich and diverse foundation for irrigation analysis and ensuring geospatial alignment and quality control. The dataset is ML-ready, with standardized 224x224 GeoTIFF patches, the multiple input modalities, carefully chosen train-test-split data, and accompanying dataloaders for seamless deep learning model training andbenchmarking in irrigation mapping. The dataset is also accompanied by a complete pipeline for dataset generation, enabling researchers to extend IrrMap to new regions for…
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