VIDEO-ANALITIKA ASOSIDA YONG‘IN XAVFSIZLIK TIZIMLARINI AVTOMATLASHTIRISHNING TAKOMILLASHTIRILGAN YONDASHUVLARI

VIDEO-ANALITIKA ASOSIDA YONG‘IN XAVFSIZLIK TIZIMLARINI AVTOMATLASHTIRISHNING TAKOMILLASHTIRILGAN YONDASHUVLARI

Authors

  • Shermuhammad Mo‘minov
  • Xayrixon Tojimirzayeva

DOI:

https://doi.org/10.5281/zenodo.19602351

Keywords:

video-analitika, yong‘in xavfsizligi, sun’iy intellekt, chuqur o‘rganish, erta ogohlantirish, avtomatlashtirish.

Abstract

Ushbu maqolada video-analitika texnologiyalaridan foydalangan holda yong‘in xavfsizligini
avtomatlashtirishning takomillashtirilgan yondashuvlari, chuqur o‘rganish modellari, sensor ma’lumotlari bilan
integratsiya va real vaqt tahlilini amalga oshiruvchi algoritmlar batafsil yoritilgan. Tizim samaradorligini oshirish, yolg‘on
ogohlantirishlarni sezilarli kamaytirish va ishonchli yong‘in monitoringini yo‘lga qo‘yish bo‘yicha ilmiy asoslangan takliflar
berilgan.

Author Biographies

Shermuhammad Mo‘minov

PhD, Farg‘ona davlat texnika universiteti

Xayrixon Tojimirzayeva

Magistr, Farg‘ona davlat texnika universiteti

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Published

2026-04-01
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