IMZONI TANIB OLISHDA QO‘LLANILADIGAN ASOSIY ALGORITMLAR: KLASSIK VA ZAMONAVIY METODLARNING SOLISHTIRILGAN TAHLILI

Authors

  • Umrbek Otanazarov Muhammad Al-Xorazmiy nomidagi Toshkent axborot texnologiyalari universiteti Magistranti Author

Keywords:

imzoni tanib olish, klassik algoritmlar, zamonaviy algoritmlar, CNN, DTW, SVM, LSTM, biometrik autentifikatsiya, algoritmik tahlil, aniqlik.

Abstract

Tadqiqotda imzoni avtomatik tanib olish jarayonida qo‘llaniladigan algoritmlarning turlari va ularning samaradorlik darajasi tahlil qilinadi. Klassik yondashuvlar — Template Matching, Euclidean Distance, Dynamic Time Warping (DTW) — va zamonaviy metodlar — Support Vector Machine (SVM), Convolutional Neural Networks (CNN), Long Short-Term Memory (LSTM) — funksional va texnologik mezonlar asosida solishtirildi. Tadqiqot natijalari klassik metodlar oddiy strukturali tizimlarda samarali bo‘lsa-da, zamonaviy chuqur o‘rganish modellarining aniqlik darajasi, barqarorlik va moslashuvchanlikda ustunligini ko‘rsatdi.

References

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Said, E., Georgiou, T., & Ferrer, M. A. (2019). Offline Signature Verification Using CNNs and Deep Learning Techniques. IET Biometrics, 8(2), 134–142.

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Published

2025-04-25

How to Cite

IMZONI TANIB OLISHDA QO‘LLANILADIGAN ASOSIY ALGORITMLAR: KLASSIK VA ZAMONAVIY METODLARNING SOLISHTIRILGAN TAHLILI. (2025). Science and Innovation, 3(12), 54-56. https://in-academy.uz/index.php/SI/article/view/33429