Development of 5G Smart Farming Dashboard to Detect Wild Animals on Pasture by Using Convolutional Neural Network
Ali Akyol (),
Rami Chahin (),
Jorge Marx Gómez (),
Hendrik Schwabe (),
Henrika Schwanke () and
Nora Uderstadt ()
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Ali Akyol: University of Oldenburg
Rami Chahin: University of Oldenburg
Jorge Marx Gómez: University of Oldenburg
Hendrik Schwabe: Chamber of Agriculture in Lower Saxony
Henrika Schwanke: Chamber of Agriculture in Lower Saxony
Nora Uderstadt: Chamber of Agriculture in Lower Saxony
A chapter in Advances and New Trends in Environmental Informatics, 2025, pp 313-328 from Springer
Abstract:
Abstract Agriculture in Central Europe serves the purpose of food production but it also takes place in natural wildlife habitats. This means that disturbance of wild animals cannot be completely avoided. When it comes to mowing of grassland or harvesting, especially deer fawns are in danger because they naturally have no reflex of escaping. To address this, Germany has introduced legal regulations and support measures, including subsidies for drones equipped with thermal imaging cameras. These technologies are part of the “5G Smart Country” project, which focuses on integrating digital solutions into agriculture. This paper presents a drone-based system developed within the project to efficiently detect and protect fawns during agricultural activities, enhancing both animal welfare and farm productivity.
Keywords: 5G; Fawn Protection; Smart Farming; Wildlife Conservation; Agricultural Digitalization; Grassland Mowing Safety (search for similar items in EconPapers)
Date: 2025
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Persistent link: https://EconPapers.repec.org/RePEc:spr:prochp:978-3-031-85284-8_18
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DOI: 10.1007/978-3-031-85284-8_18
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