TASVIRLAR CHEGARALARNI SAQLAGAN HOLDA YAXSHILASH YONDASHUVI

Authors

  • Hamroyev Alisher Shodmonqulovich Author

Keywords:

Kalit so‘zlar: tasvir filtrlash, noaniq mantiq, gradient tahlili, RGB tasvirlarga ishlov berish, adaptiv filtrlash, chegaralarni saqlash.

Abstract

Annotatsiya.  Tasvirlarni  shovqindan  tozalash  va  sifatini  yaxshilash  raqamli 
tasvirlarga ishlov berish sohasidagi eng muhim masalalardan biri hisoblanadi, ayniqsa 
rangli tasvirlarda shovqinni kamaytirish bilan birga obyekt chegaralarini saqlab qolish 
murakkab vazifa hisoblanadi. An’anaviy silliqlash filtrlari odatda fazoviy jihatdan bir 
xil og‘irliklardan foydalanishi sababli chegaralarning xiralashishiga olib keladi. 
Ushbu  maqolada  RGB  tasvirlarni  yaxshilash  uchun  gradientga  asoslangan 
noaniq a’zolik modellashtirishiga tayanuvchi yondashuv taklif etiladi. Taklif etilgan 
yondashuv  fazoviy  Gauss  og‘irliklarini  gradientga  bog‘liq  noaniq  moslashuv 
mexanizmi bilan birlashtirib, silliqlash intensivligini dinamik ravishda boshqaradi. 

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Published

2026-02-22

How to Cite

Hamroyev Alisher Shodmonqulovich. (2026). TASVIRLAR CHEGARALARNI SAQLAGAN HOLDA YAXSHILASH YONDASHUVI . Ta’lim Innovatsiyasi Va Integratsiyasi, 63(2), 99-102. https://journalss.org/index.php/tal/article/view/19660