التحقق من البشر بواسطة تبني شبكة تعلم عميق لصور بصمات الاصابع

محتوى المقالة الرئيسي

Islam Nahedh Alabdoo
https://orcid.org/0009-0006-7532-9013
Mehmet Ali Yalçınkaya
https://orcid.org/0000-0002-7320-5643

الملخص

يمكن اعتبار صورة الإصبع واحدة من أحدث وأكثر التقنيات البيومترية إثارة للاهتمام. يعني ذلك ببساطة صورة بصمة أصبع يتم الحصول عليها عن طريق هاتف ذكي بطريقة لا تتطلب الاتصال المباشر. يقترح هذا البحث نهجًا جديدًا للتحقق من البشر استنادًا إلى صورة الإصبع الفوتوغرافية. يُطلق عليه اسم شبكة الإصبع الفوتوغرافية العميقة المتكررة. تتألف من طبقة الإدخال، وسلسلة من الطبقات الخفية، وطبقة الإخراج والتغذية العكسية الاساسية. يعتمد هذا البحث على اخذ صور فوتوغرافية لكافة الاصابع الشخصية بشكل متسلسل. و يتمتع النظام بالقدرة على التبديل بين أوزان كل إصبع فوتوغرافي فردي وتوفير التحقق. تم انشاء قاعدة بينات من عدد كبير من صور الأصابع الفوتوغرافية، وتم تنظيمها وتقسيمها واستخدامها كمجموعة بيانات مفيدة في هذا البحث. تم التوصل الى نتائج عالية في الدقة  في التحقق الشخصي عن طريق استخدام الصور الفوتوغرافية للاصابع.

تفاصيل المقالة

كيفية الاقتباس
1.
التحقق من البشر بواسطة تبني شبكة تعلم عميق لصور بصمات الاصابع. Baghdad Sci.J [انترنت]. 25 مايو، 2024 [وثق 19 ديسمبر، 2024];21(5(SI):1827. موجود في: https://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/10552
القسم
Special Issue - (ICCDA) International Conference on Computing and Data Analytics

كيفية الاقتباس

1.
التحقق من البشر بواسطة تبني شبكة تعلم عميق لصور بصمات الاصابع. Baghdad Sci.J [انترنت]. 25 مايو، 2024 [وثق 19 ديسمبر، 2024];21(5(SI):1827. موجود في: https://bsj.uobaghdad.edu.iq/index.php/BSJ/article/view/10552

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