Implementasi Sistem Keamanan Pintu Gedung dengan Pendekatan Face Recognition Menggunakan Convolutional Neural Network (CNN) Berbasis IoT
Implementation of a Building Door Security System Using a Face Recognition Approach Using Convolutional Neural Network (CNN) Based IoT

Date
2024Author
Patrecella, Regina Putri
Advisor(s)
Herriyance
Sihombing, Poltak
Metadata
Show full item recordAbstract
In this digital era, technology-based security systems are increasingly needed to
increase protection of important buildings and facilities. One technology that is
currently developing is facial recognition. Face recognition is a technology used to
identify or verify a person's identity through analysis of their facial features. This
research aims to improve building security by ensuring only registered people can
access the door, reducing the risk of security breaches from physical keys or access
cards. This research involves stages of literature study to understand the concepts of
face recognition, internet of things and convolutional neural networks, dataset
collection, labeling, training, test and evaluation. From the results of the tested data,
there are test result values, namely, accuracy value, precision value, recall value, and
F1-Score value. These include an accuracy value of 72.7%, a precision value of 50%,
a recall value of 75%, and an F1-Score value of 60%. This research shows that facial
recognition technology with the Convolutional Neural Network (CNN) algorithm
provides maximum facial recognition results in good lighting conditions. However,
system performance tends to decrease when lighting is less than optimal.
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- Undergraduate Theses [1181]