AXBOROT TIZIMLARIDA BIOMETRIK AUTENTIFIKATSIYA TEXNOLOGIYALARINING ALGORITMLARI

Authors

  • Oyatulla Usmonov
  • Rozaliyev Abdumalik

Keywords:

biometrik autentifikatsiya, barmoq izi tanish, yuz tanish, iris tanish, FAR, FRR, EER, chuqur o'rganish, ArcFace, axborot xavfsizligi.

Abstract

Ushbu maqola axborot tizimlarida biometrik autentifikatsiyaning asosiy algoritmlarini — barmoq izi tanish (minutsiya va CNN-asosli), yuz tanish (Eigenfaces, PCA, ArcFace), iris tanish (Daugman IrisCodes) hamda ovoz autentifikatsiyasi (GMM-UBM, x-vektor) usullarini tizimli ravishda tahlil qiladi. Har bir algoritmning matematik asosi, aniqlik ko'rsatkichlari (FAR, FRR, EER) va axborot tizimlarida amaliy qo'llanilishi ko'rib chiqiladi. Sun'iy intellekt usullari — xususan, konvolyutsion va rekurrent neyron tarmoqlar — biometrik aniqlikka qo'shgan hissasi miqdoriy baholangan. Ko'p modal biometrik tizimlarning bir modal tizimlarga nisbatan afzalliklari eksperimental ma'lumotlar asosida ko'rsatilgan. Maqola natijalarida biometrik algoritmlarni axborot xavfsizligi tizimlariga integratsiya qilishning optimal strategiyalari taklif etilgan.

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Published

2026-06-06