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Improved Machine Learning Methodology for High Precision Agriculture
Type of publication: Inproceedings
Citation:
Year: 2018
Month: May
Publisher: Inproceedings of the 2018 Global Internet of Things Summit (GIoTS)
Location: Bilbao, Spain
Abstract: This paper presents the impact of machine learning in precision agriculture. State-of-the art image recognition is applied on a dataset composed of high precision aerial pictures of vineyards. The study presents a comparison of an innovative machine learning methodology compared to a baseline used classically on vineyard and agricultural objects. The baseline uses color analysis and is able discriminates interesting objects with an accuracy of 89.6 %. The machine learning innovative approach demonstrates that the results can be improved to obtain 94.27 % of accuracy. Machine Learning used to enrich and improve the detection of precise agricultural objects is also discussed in this study and opens new perspectives for the future of high precision agriculture.
Keywords: Agricultural health, Hyper-spectral images, Image recognition, machine learning, Precision agriculture, Prediction
Authors Treboux, Jerome
Genoud, Dominique
Added by: []
Total mark: 0
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