Published December 10, 2023 | Version v1
Journal article Open

BARG TASVIRI BOʻYICHA MADANIY OʻSIMLIKLARNING FITOSANITAR HOLATINI ANIQLASH ALGORITMLARI

  • 1. TIQXMMI Milliy tadqiqiot universiteti t.f.d katta ilmiy xodimi
  • 2. Muxammad al-Xorazmiy nomidagi Toshkent axborot texnologiyalar universiteti assistenti
  • 3. Raqamli texnologiyalar va sunʼiy intellektni rivojlantirish ilmiy tadqiqot instituti tayanch doktoranti
  • 4. TIQXMMI Milliy tadqiqiot universiteti

Description

Ushbu maqolada madaniy oʻsimliklarning fitosanitar holatini aniqlash masalasi qaralgan va boshlangʻich maʼlumotlar sifatida ularning barg tasvirlari olingan. Mazkur masalani hal qilish uchun ikki oʻlchamli boʻsagʻaviy funksiyalarga asoslangan tanib olish algoritmlari modeli taklif etilgan. Taklif etilayotgan algoritmlarning asosiy gʻoyasi afzal belgilar toʻplamini shakllantirish va ushbu belgilarni taqqoslash asosida qarorlar qabul qilish qoidasini qurishdan iborat. Fitosanitar holatini aniqlash algoritmlari modelini tasniflash bosqichlari keltirilgan. Taklif etilayotgan modelning ishga yaroqli ekanligini baholash barg tasvirlari yordamida gʻoʻzaning fitosanitar holatini aniqlash masalasini hal qilish orqali koʻrsatilgan.

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