Please use this identifier to cite or link to this item: http://elartu.tntu.edu.ua/handle/lib/34232
Title: Розумний відео-дзвінок на основі Raspberry Pi
Other Titles: Smart door-bell based on Raspberry PI
Authors: Aboulfadel, Mohamed
Affiliation: Тернопільський національний технічний університет імені Івана Пулюя
Bibliographic description (Ukraine): Абуальфадел М. Розумний відео-дзвінок на основі Raspberry Pi / Абульфадел Мухамед // ТНТУ, ФІС, Тернопіль, 2021. 76 с.
Bibliographic description (International): Aboulfadel M. Smart door-bell based on Raspberry PI /Aboulfadel Mohamed// Ternopil Ivan Puluj National Technical University, Faculty of Computer Information Systems and Software Engineering //Ternopil, 2021 // p.76
Issue Date: Jan-2021
Submitted date: Jan-2021
Date of entry: 15-Feb-2021
Publisher: Тернопільський національний технічний університет імені Івана Пулюя
Country (code): UA
Place of the edition/event: Тернопільський національний технічний університет імені Івана Пулюя
Supervisor: Луцків, Андрій Мирославович
Lutskiv, Andriy
Committee members: Боднарчук, Ігор Орестович
Bodnarchuk, Ihor
UDC: 004.4
Keywords: Raspberry Pi
OpenCV
Python
real-time face recognition
Number of pages: 76
Abstract: Being a student of Computer Engineering gave me a chance to choose this project where im going to explain how I made a Smart Doorbell with Face recognition real-time. Using the Raspberry PI 3 model B+ and PI Camera. In The software part I used Python programing language to write my code and SQL for the Database.
Content: Introduction. 1. Analysis of subject area. 2. Hardware components the smart door-bell with real-time face recognition. 3. Software smart door-bell with real-time face recognition. 4. Occupational safety and health. Conclusions
URI: http://elartu.tntu.edu.ua/handle/lib/34232
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Content type: Bachelor Thesis
Appears in Collections:123 — комп’ютерна інженерія (бакалаври)

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