Published March 25, 2024 | Version v1
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YUZ IFODASINI ANIQLASH MODELLARINI OPTIMALLASHTIRISH: GRADIENTNI OSHIRISH VA UNING GIPERPARAMETRLARNI SOZLASH VA MUNTAZAMLASHTIRISH (REGULARIZATSIYA)DAGI AHAMIYATI

Description

So‘nggi yillarda yuz ifodasini aniqlash turli sohalarda, jumladan, inson va kompyuter o’zaro ta’siri, hissiyotlarni tahlil qilish va yuz biometrikasida keng qo‘llanilishi tufayli katta e’tiborga sazovor bo‘ldi. Yuz ifodasini aniqlashning aniq va mustahkam modellarini ishlab chiqish ishonchli natijalarga erishish uchun juda muhimdir. Ushbu maqolada yuz ifodasini aniqlash modellarini optimallashtirishning ahamiyati va modelni optimallashtirishda gradientni kuchaytirish rolini haqida so‘z boradi. Bundan tashqari, optimallashtirish jarayoniga hissa qo‘shadigan giperparametrlarni sozlash, tartibga solish usullari, ma’lumotlarni ko‘paytirish, uzatishni o‘rganish va ishlash ko‘rsatkichlarini muhokama qilinadi.

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