Identification of Sunn-pest affected (Eurygaster Integriceps put.) wheat plants and their distribution in wheat fields using aerial imaging

Ecological Informatics - Tập 76 - Trang 102146 - 2023
Jalal Baradaran Motie1, Mohammad Hossein Saeidirad2, Mostafa Jafarian3
1Department of Biosystems Engineering, Ferdowsi University of Mashhad, Mashhad, Iran
2Department of Agricultural Engineering Research, Khorasan Razavi Agricultural and Natural Resources Research and Education Center, AREEO, Mashhad, Iran
3Ph.D Graduated of Mechanic of Biosystems Engineering, Faculty of Agricultural Engineering and Technology, University of Tehran, Karaj, Iran

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