MASHINALI O‘QITISH ALGORITMLARI ASOSIDA TIBBIY TASVIRLARNI ANIQLASH USULLARI

Authors

  • Maftuna Rajabova Author
  • Giyosjon Jumaev Author

Keywords:

mashinali o‘qitish, nazoratli o‘qitish, nazoratsiz o‘qitish, mustahkamlash orqali o‘qitish, onlayn o‘qitish, segmentatsiya, klassifikatsiya, tibbiy tasvirlarni aniqlash, sun’iy intellect, rentgen, yorliq belgilash.

Abstract

Ushbu maqola mashinali o‘qitish algoritmlari asosida tibbiy tasvirlarni aniqlash usullariga bag‘ishlangan. Bundan tashqari maqolada tibbiy tasvirlar, tasvirlarni mashinali o‘qitish algoritmlarining segmentatsiya, klassifikatsiya va chuqur o‘qitish usullari ko‘rib chiqilgan. Shuningdek, nazoratli o‘qitish usuli asosida zararlangan hududni aniqlash muammosi ko‘rib chiqilgan.

References

Sadullaeva Sh.A., Aripova Z.D, Rajabova M.R., “Ayollarda uchraydigan mioma kasalligini segmentatsiyalash orqali aniqlash” “Zamonaviy Axborot, Kommunikatsiya Texnologiyalari Va At-Ta’lim Tatbiqi Muammolari” Mavzusidagi Respublika Ilmiy-Amaliy Anjumani, Samarqand,pp. 88–90, 2022.

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Published

2025-01-04

How to Cite

MASHINALI O‘QITISH ALGORITMLARI ASOSIDA TIBBIY TASVIRLARNI ANIQLASH USULLARI . (2025). Eurasian Journal of Academic Research, 4(12 Special Issue), 116-120. https://in-academy.uz/index.php/EJAR/article/view/4807