Many sciences exploit algorithms in a large variety of applications. In agronomy, large amounts of agricultural data are handled by adopting procedures for optimization, clustering, or automatic learning. In this particular field, the number of scientific papers has significantly increased in recent years, triggered by scientists using artificial intelligence, comprising deep learning and machine learning methods or bots, to process field, crop, plant, or leaf images. Moreover, many other examples can be found, with different algorithms applied to plant diseases and phenology. This paper reviews the publications which have appeared in the past three years, analyzing the algorithms used and classifying the agronomic aims and the crops to which the methods are applied. Starting from a broad selection of 6060 papers, we subsequently refined the search, reducing the number to 358 research articles and 30 comprehensive reviews. By summarizing the advantages of applying algorithms to agronomic analyses, we propose a guide to farming practitioners, agronomists, researchers, and policymakers regarding best practices, challenges, and visions to counteract the effects of climate change, promoting a transition towards more sustainable, productive, and cost-effective farming and encouraging the introduction of smart technologies.

Colucci, G. P., Battilani, P., Camardo Leggieri, M., Trinchero, D., Algorithms for Plant Monitoring Applications: A Comprehensive Review, <<ALGORITHMS>>, 2025; 18 (2): N/A-N/A. [doi:10.3390/a18020084] [https://hdl.handle.net/10807/311947]

Algorithms for Plant Monitoring Applications: A Comprehensive Review

Battilani, Paola;Camardo Leggieri, Marco;
2025

Abstract

Many sciences exploit algorithms in a large variety of applications. In agronomy, large amounts of agricultural data are handled by adopting procedures for optimization, clustering, or automatic learning. In this particular field, the number of scientific papers has significantly increased in recent years, triggered by scientists using artificial intelligence, comprising deep learning and machine learning methods or bots, to process field, crop, plant, or leaf images. Moreover, many other examples can be found, with different algorithms applied to plant diseases and phenology. This paper reviews the publications which have appeared in the past three years, analyzing the algorithms used and classifying the agronomic aims and the crops to which the methods are applied. Starting from a broad selection of 6060 papers, we subsequently refined the search, reducing the number to 358 research articles and 30 comprehensive reviews. By summarizing the advantages of applying algorithms to agronomic analyses, we propose a guide to farming practitioners, agronomists, researchers, and policymakers regarding best practices, challenges, and visions to counteract the effects of climate change, promoting a transition towards more sustainable, productive, and cost-effective farming and encouraging the introduction of smart technologies.
2025
Inglese
Colucci, G. P., Battilani, P., Camardo Leggieri, M., Trinchero, D., Algorithms for Plant Monitoring Applications: A Comprehensive Review, <<ALGORITHMS>>, 2025; 18 (2): N/A-N/A. [doi:10.3390/a18020084] [https://hdl.handle.net/10807/311947]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/311947
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