Quantifying the effect of Jacobiasca lybica pest on vineyards with UAVs by combining geometric and computer vision techniques
- PMID: 31009493
- PMCID: PMC6476504
- DOI: 10.1371/journal.pone.0215521
Quantifying the effect of Jacobiasca lybica pest on vineyards with UAVs by combining geometric and computer vision techniques
Abstract
With the increasing competitiveness in the vine market, coupled with the increasing need for sustainable use of resources, strategies for improving farm management are essential. One such effective strategy is the implementation of precision agriculture techniques. Using photogrammetric techniques, the digitalization of farms based on images acquired from unmanned aerial vehicles (UAVs) provides information that can assist in the improvement of farm management and decision-making processes. The objective of the present work is to quantify the impact of the pest Jacobiasca lybica on vineyards and to develop representative cartography of the severity of the infestation. To accomplish this work, computational vision algorithms based on an ANN (artificial neural network) combined with geometric techniques were applied to geomatic products using consumer-grade cameras in the visible spectra. The results showed that the combination of geometric and computational vision techniques with geomatic products generated from conventional RGB (red, green, blue) images improved image segmentation of the affected vegetation, healthy vegetation and ground. Thus, the proposed methodology using low-cost cameras is a more cost-effective application of UAVs compared with multispectral cameras. Moreover, the proposed method increases the accuracy of determining the impact of pests by eliminating the soil effects.
Conflict of interest statement
The authors have declared that no competing interests exist.
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References
-
- FAOSTAT. Agricultural statistical data of Food and Agricultural Organization of the United Nations [Internet]. 2014. Available: http://www.fao.org/faostat/en/#data/QC
-
- MAPAMA. Encuesta sobre superficies y rendimientos de cultivos de España 2016. Resultados Nacionales y Autonómicos MAPAMA, Secretaría General Técnica, Centro de Publicaciones, Catálogo de Publicaciones de la Administración General del Estado, editors. MAPAMA; 2016.
-
- Lentini A, Delrio G, Serra G. Observations on the infestations of Jacobiasca lybica on grapevine in Sardinia. Integrated Control in Viticulture IOBC/wprs Bulletin. 2000;23: 127–129.
-
- Lee WS, Alchanatis V, Yang C, Hirafuji M, Moshou D, Li C. Sensing technologies for precision specialty crop production. Computers and Electronics in Agriculture. 2010;74: 2–33. 10.1016/j.compag.2010.08.005 - DOI
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