KOMPYUTER KO‘RISH TEXNOLOGIYALARI YORDAMIDA QISHLOQ XO‘JALIGIDA HOSILNI MONITORING QILISH
Mulaydinov Farxod Murotovich
Qo‘qon universiteti Registrator ofisi boshlig‘i muovini
Usmonov Muhammadabdulla Qaxramon o‘g‘li
Qo‘qon universiteti talabasi
Keywords: Kompyuter ko‘rish, Qishloq xo‘jaligi monitoring, NDVI indekslari, Sun’iy intellekt, OpenCV
Abstract
Ushbu maqolada kompyuter ko‘rish texnologiyalarining qishloq xo‘jaligida, xususan, hosilni monitoring qilishdagi ahamiyati o‘rganilgan. An’anaviy kuzatuv va nazorat usullari bilan solishtirganda, sun’iy intellekt va tasvirni qayta ishlash metodlari asosida yaratilgan tizimlar tezkorlik, aniqlik va mehnat samaradorligini sezilarli darajada oshiradi. Tadqiqotda OpenCV kutubxonasi asosida ishlab chiqilgan kompyuter ko‘rish algoritmlari yordamida daladagi o‘simliklarning holati, o‘sish darajasi hamda hosildorlikka ta’sir etuvchi omillar aniqlangan. Shuningdek, rang, shakl va tuzilishga asoslangan tasvir tahlili orqali zararli hasharotlar va kasalliklar mavjudligi aniqlanib, ularga qarshi choralar ishlab chiqish imkoni tahlil etildi. Tadqiqot natijalari, ushbu texnologiyaning kelajakda agrosanoat sohasida keng qo‘llanish salohiyatiga ega ekanligini ko‘rsatdi. Ushbu maqola, sun’iy intellekt texnologiyalarini agrosanoatda qo‘llash bo‘yicha ilmiy-amaliy asos yaratishga xizmat qiladi.
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