Litcius/Paper detail

Deep learning techniques for in-crop weed recognition in large-scale grain production systems: a review

Kun Hu, Zhiyong Wang, Guy Coleman, Asher Bender, Tingting Yao, Shan Zeng, Dezhen Song, Arnold W. Schumann, Michael Walsh

2023Precision Agriculture66 citationsDOIOpen Access PDF

Abstract

Abstract Weeds are a significant threat to agricultural productivity and the environment. The increasing demand for sustainable weed control practices has driven innovative developments in alternative weed control technologies aimed at reducing the reliance on herbicides. The barrier to adoption of these technologies for selective in-crop use is availability of suitably effective weed recognition. With the great success of deep learning in various vision tasks, many promising image-based weed detection algorithms have been developed. This paper reviews recent developments of deep learning techniques in the field of image-based weed detection. The review begins with an introduction to the fundamentals of deep learning related to weed detection. Next, recent advancements in deep weed detection are reviewed with the discussion of the research materials including public weed datasets. Finally, the challenges of developing practically deployable weed detection methods are summarized, together with the discussions of the opportunities for future research. We hope that this review will provide a timely survey of the field and attract more researchers to address this inter-disciplinary research problem.

Topics & Concepts

Deep learningWeedAgriculturePrecision agricultureWeed controlProductivityComputer scienceField (mathematics)Agricultural productivityCrop productivityArtificial intelligenceAgricultural engineeringData scienceEngineeringGeographyMathematicsAgronomyMacroeconomicsEconomicsPure mathematicsBiologyArchaeologySmart Agriculture and AIDate Palm Research StudiesPlant Disease Management Techniques