Farm-Level, In-Season Crop Identification for India
Ishan Deshpande, Amandeep Kaur Reehal, Chandan Nath, Renu Singh, Aayush Patel, Aishwarya Jayagopal, Gaurav Singh, Gaurav Aggarwal, Amit Agarwal, Prathmesh Bele, Sridhar Reddy, Tanya Warrier, Kinjal Singh, Ashish Tendulkar, Luis Pazos Outon, Nikita Saxena, Agata Dondzik

TL;DR
This paper introduces a scalable deep learning framework for in-season, farm-level crop identification across India, leveraging satellite imagery and farm boundary data to improve agricultural monitoring and decision-making.
Contribution
It presents a novel, scalable approach combining satellite data and automated season detection for accurate, in-season crop identification at the national scale in India.
Findings
Achieved 94% agreement with national crop census in winter season.
Successfully identified 12 major crops covering 90% of India's cultivated area.
Enabled crop identification as early as two months into the growing season.
Abstract
Accurate, timely, and farm-level crop type information is paramount for national food security, agricultural policy formulation, and economic planning, particularly in agriculturally significant nations like India. While remote sensing and machine learning have become vital tools for crop monitoring, existing approaches often grapple with challenges such as limited geographical scalability, restricted crop type coverage, the complexities of mixed-pixel and heterogeneous landscapes, and crucially, the robust in-season identification essential for proactive decision-making. We present a framework designed to address the critical data gaps for targeted data driven decision making which generates farm-level, in-season, multi-crop identification at national scale (India) using deep learning. Our methodology leverages the strengths of Sentinel-1 and Sentinel-2 satellite imagery, integrated…
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