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VIDEOTASVIRLARDAN OLINGAN MA’LUMOTLAR ASOSIDA SHAXS POZASINI TANIB OLISHNING NEYROTARMOQLI MODELI

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MAQOLA ANNOTATSIYASI

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Bugungi kunda shaxsni tanib olish va identifikatsiya qilishning bir nechta usullari mavjud bo‘lib, ular kundan-kunga takomillashib bormoqda. Biroq bu usullarni qalbakilashtirish holatlari ham kuzatilmoqda. Zamonaviy videokuzatuv tizimlari rivojlanib, shu tizimlar yordamida ma’lum bir hududda sodir bo‘layotgan barcha voqea-hodisalarni suratga olish hamda olingan ma’lumotlarni neyron tarmoqlar yordamida tezkor va samarali tahlil qilish imkoniyatlari paydo bo‘lmoqda. Videotasvirlar orqali shaxs harakatini kuzatish, taqiqlangan hududga noqonuniy kirishni aniqlash, kameralardan olingan surat yordamida jinoyatchilarni topish, qidiruvdagi jinoyatchilarning boshqa biometrik ma’lumotlarni o‘zlashtirgan holda, xorijiy davlatlarga chiqish yoki kirishini nazorat qilish mumkin. Ushbu tizim aeroportlar, temir yo‘l vokzallari, dengiz portlarida jinoyatchilarni ushlashga yordam beradi, bir qatorda yoki olomonda bo‘lgan odamlar sonini avtomatik ravishda sanaydi va ularning harakatlari xarakterini tahlil qiladi. Bu esa insonning subyektiv aralashuvi va ma’lumotlarni qayta ishlash uchun zarur bo‘lgan vaqtni kamaytiradi. Bundan tashqari, sportchilar harakatlarida ham pozani neyron tarmoqlar yordamida baholash hozirda keng qo‘llanilmoqda. Xususan, sportchilarni guruhdan ajratib olish va shaxsiyatga qarab xatti-harakatlarini o‘rganish, buning natijasida sport mashg‘ulotlari samaradorligini oshirish mumkin

MUALIFLAR

Teglar

# нейронная сеть# classification# классификация# факторы# neural network# mapping# artificial intelligence# искусственный интеллект# картографирование# sun’iy intellekt# xaritalash# neyron tarmoq# pozani baholash# sinflashtirish# yurishni tanib olish# shaxsni identifikatsiya qilish# yurish tasviriga ta’sir qiluvchi# оценка положения# распознавание походки# идентификация человека# влияющие на изображение походки# pose estimation# gait recognition# human identification# factors affecting gait images

Maqolani baholang

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Maqola idintifikatorlari

Foydalanilgan adabiyotlar

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