Advancements in Weed Mapping: A Systematic Review
Mohammad Jahanbakht, Alex Olsen, Ross Marchant, Emilie Fillols, and Mostafa Rahimi Azghadi

TL;DR
This paper systematically reviews recent advances in weed mapping technologies, highlighting sensor platforms, data processing methods, and mapping techniques to improve precision agriculture and sustainable land management.
Contribution
It provides a comprehensive analysis of the entire weed mapping pipeline, addressing gaps in current literature and guiding future research directions.
Findings
Integration of drone and satellite remote sensing enhances spatial resolution.
Machine learning techniques improve weed detection accuracy.
Structured analysis of data acquisition, processing, and mapping methods.
Abstract
Weed mapping plays a critical role in precision management by providing accurate and timely data on weed distribution, enabling targeted control and reduced herbicide use. This minimizes environmental impacts, supports sustainable land management, and improves outcomes across agricultural and natural environments. Recent advances in weed mapping leverage ground-vehicle Red Green Blue (RGB) cameras, satellite and drone-based remote sensing combined with sensors such as spectral, Near Infra-Red (NIR), and thermal cameras. The resulting data are processed using advanced techniques including big data analytics and machine learning, significantly improving the spatial and temporal resolution of weed maps and enabling site-specific management decisions. Despite a growing body of research in this domain, there is a lack of comprehensive literature reviews specifically focused on weed mapping.…
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