Using Machine Learning to generate an open-access cropland map from satellite images time series in the Indian Himalayan Region
Danya Li, Joaquin Gajardo, Michele Volpi, Thijs Defraeye

TL;DR
This study develops a machine learning pipeline using Sentinel-2 satellite time series to produce high-resolution, open-access cropland maps in Himachal Pradesh, India, addressing data scarcity challenges in developing regions.
Contribution
The paper introduces a robust RF-based ML approach for cropland mapping using satellite data, with a focus on developing countries and limited ground truth data.
Findings
RF classifier achieved 87% accuracy on test data
Generated cropland maps cover 14,600 km2 in Himachal Pradesh
Method improves resolution and quality over existing public maps
Abstract
Crop maps are crucial for agricultural monitoring and food management and can additionally support domain-specific applications, such as setting cold supply chain infrastructure in developing countries. Machine learning (ML) models, combined with freely-available satellite imagery, can be used to produce cost-effective and high spatial-resolution crop maps. However, accessing ground truth data for supervised learning is especially challenging in developing countries due to factors such as smallholding and fragmented geography, which often results in a lack of crop type maps or even reliable cropland maps. Our area of interest for this study lies in Himachal Pradesh, India, where we aim at producing an open-access binary cropland map at 10-meter resolution for the Kullu, Shimla, and Mandi districts. To this end, we developed an ML pipeline that relies on Sentinel-2 satellite images time…
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Taxonomy
TopicsRemote Sensing in Agriculture · Smart Agriculture and AI · Spectroscopy and Chemometric Analyses
