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Automating grapevine LAI features estimation with UAV imagery and machine learning

Authors :
Akram, Muhammad Waseem
Vannucci, Marco
Buttazzo, Giorgio
Colla, Valentina
Roccella, Stefano
Vannini, Andrea
Caruso, Giovanni
Nesi, Simone
Francini, Alessandra
Sebastiani, Luca
Publication Year :
2024

Abstract

The leaf area index determines crop health and growth. Traditional methods for calculating it are time-consuming, destructive, costly, and limited to a scale. In this study, we automate the index estimation method using drone image data of grapevine plants and a machine learning model. Traditional feature extraction and deep learning methods are used to obtain helpful information from the data and enhance the performance of the different machine learning models employed for the leaf area index prediction. The results showed that deep learning based feature extraction is more effective than traditional methods. The new approach is a significant improvement over old methods, offering a faster, non-destructive, and cost-effective leaf area index calculation, which enhances precision agriculture practices.<br />Comment: Accepted in 2024 IEEE INTERNATIONAL WORKSHOP ON Metrology for Agriculture and Forestry

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.17897
Document Type :
Working Paper