Monitoring crop phenology with street-level imagery using computer vision
Rapha\"el d'Andrimont, Momchil Yordanov, Laura Martinez-Sanchez,, Marijn van der Velde

TL;DR
This paper presents a computer vision framework using street-level imagery and deep learning to efficiently monitor crop types and phenological stages, demonstrating high accuracy in a real-world agricultural setting.
Contribution
It introduces a novel approach combining street imagery and transfer learning for crop phenology monitoring, enabling scalable and automated data collection.
Findings
Achieved 88.1% Macro F1 score in crop type classification.
Successfully identified main phenological stages with 86.9% accuracy.
Collected 400,000 geo-tagged images over a growing season.
Abstract
Street-level imagery holds a significant potential to scale-up in-situ data collection. This is enabled by combining the use of cheap high quality cameras with recent advances in deep learning compute solutions to derive relevant thematic information. We present a framework to collect and extract crop type and phenological information from street level imagery using computer vision. During the 2018 growing season, high definition pictures were captured with side-looking action cameras in the Flevoland province of the Netherlands. Each month from March to October, a fixed 200-km route was surveyed collecting one picture per second resulting in a total of 400,000 geo-tagged pictures. At 220 specific parcel locations detailed on the spot crop phenology observations were recorded for 17 crop types. Furthermore, the time span included specific pre-emergence parcel stages, such as differently…
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Taxonomy
TopicsRemote Sensing in Agriculture · Smart Agriculture and AI · Land Use and Ecosystem Services
