Improved Machine Learning Methodology for High Precision Agriculture
Tipo de publicação: | Inproceedings |
Citação: | |
Ano: | 2018 |
Mês: | May |
Publisher: | Inproceedings of the 2018 Global Internet of Things Summit (GIoTS) |
Location: | Bilbao, Spain |
Resumo: | 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. |
Palavras-chave: | Agricultural health, Hyper-spectral images, Image recognition, machine learning, Precision agriculture, Prediction |
Autores | |
Adicionado por: | [] |
Total mark: | 0 |
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