Multi-Temporal Site-Specific Weed Control of Cirsium arvense (L.) Scop. and Rumex crispus L. in Maize and Sugar Beet Using Unmanned Aerial Vehicle Based Mapping
- Publication Type
- Journal contribution (peer reviewed)
- Authors
- Robin Mink, Avishek Dutta, Gerassimos G. Peteinatos, Markus Sökefeld, Johannes Joachim Engels, Michael Hahn and Roland Gerhards
- Year of publication
- 2018
- Published in
- Agriculture
- Band/Volume
- Volume 8, Issue 5/
- DOI
- https://doi.org/10.3390/agriculture8050065
Sensor-based weed mapping in arable fields is a key element for site-specific herbicide management strategies. In this study, we investigated the generation of application maps based on Unmanned Aerial Vehicle imagery and present a site-specific herbicide application using those maps. Field trials for site-specific herbicide applications and multi-temporal image flights were carried out in maize (Zea mays L.) and sugar beet (Beta vulgaris L.) in southern Germany. Real-time kinematic Global Positioning System precision planting information provided the input for determining plant rows in the geocoded aerial images. Vegetation indices combined with generated plant height data were used to detect the patches containing creeping thistle (Cirsium arvense (L.) Scop.) and curled dock (Rumex crispus L.). The computed weed maps showed the presence or absence of the aforementioned weeds on the fields, clustered to 9 m × 9 m grid cells. The precision of the correct classification varied from 96% in maize to 80% in the last sugar beet treatment. The computational underestimation of manual mapped C. arvense and R. cripus patches varied from 1% to 10% respectively. Overall, the developed algorithm performed well, identifying tall perennial weeds for the computation of large-scale herbicide application maps.
Involved persons
- M.Sc. Robin Mink
- Dr. sc. agr. Gerassimos Peteinatos
- Dr. agr. Markus Sökefeld
- Prof. Dr. Roland Gerhards