Multispectral Fine-Grained Classification of Blackgrass in Wheat and Barley Crops
Madeleine Darbyshire, Shaun Coutts, Eleanor Hammond, Fazilet Gokbudak, Cengiz Oztireli, Petra Bosilj, Junfeng Gao, Elizabeth Sklar, Simon Parsons

TL;DR
This study evaluates machine vision and multispectral imaging techniques for detecting blackgrass in wheat and barley, achieving over 80% accuracy and demonstrating the importance of spectral bands and dataset size.
Contribution
It introduces the Eastern England Blackgrass Dataset and assesses CNN and transformer models for blackgrass detection in cereal crops.
Findings
All models achieved over 80% accuracy.
Best model reached 89.6% accuracy with half the training data.
Spectral bands significantly influence classification performance.
Abstract
As the burden of herbicide resistance grows and the environmental costs of excessive herbicide use become clear, new approaches to managing weed populations are needed. This is particularly true for cereal crops, like wheat and barley, that are staple foods and occupy a globally significant share of farmland. Even modest advances in weed management practices across these crops could deliver major benefits for both the environment and food security. Blackgrass is a major grass weed which causes particular problems in cereal crops in north-west Europe, a major cereal production area, because it has high levels of herbicide resistance. Detecting blackgrass is also difficult due to its similarity to cereals. Yet, a systematic review of the literature on weed recognition in wheat and barley, included in this study, highlights that blackgrass - and grass weeds more broadly - have received…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses
