PENGEMBANGAN SISTEM BASIS DATA DAN PELAPORAN PADA SMART ATTENDANCE SYSTEM MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN)

BAYU, UBAIDILAH AL and Supardi, Julian and Arsalan, Osvari (2022) PENGEMBANGAN SISTEM BASIS DATA DAN PELAPORAN PADA SMART ATTENDANCE SYSTEM MENGGUNAKAN CONVOLUTIONAL NEURAL NETWORK (CNN). Undergraduate thesis, Sriwijaya University.

[thumbnail of RAMA_55201_09021381823144.pdf] Text
RAMA_55201_09021381823144.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (4MB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_TURNITIN.pdf] Text
RAMA_55201_09021381823144_TURNITIN.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (8MB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_01_front_ref.pdf]
Preview
Text
RAMA_55201_09021381823144_0010077210_0028068806_01_front_ref.pdf - Accepted Version
Available under License Creative Commons Public Domain Dedication.

Download (499kB) | Preview
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_02.pdf] Text
RAMA_55201_09021381823144_0010077210_0028068806_02.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (180kB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_03.pdf] Text
RAMA_55201_09021381823144_0010077210_0028068806_03.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (108kB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_04.pdf] Text
RAMA_55201_09021381823144_0010077210_0028068806_04.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (2MB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_05.pdf] Text
RAMA_55201_09021381823144_0010077210_0028068806_05.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (411kB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_06.pdf] Text
RAMA_55201_09021381823144_0010077210_0028068806_06.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (33kB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_06_ref.pdf] Text
RAMA_55201_09021381823144_0010077210_0028068806_06_ref.pdf - Bibliography
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (88kB) | Request a copy
[thumbnail of RAMA_55201_09021381823144_0010077210_0028068806_07_lamp.pdf] Text
RAMA_55201_09021381823144_0010077210_0028068806_07_lamp.pdf - Accepted Version
Restricted to Repository staff only
Available under License Creative Commons Public Domain Dedication.

Download (326kB) | Request a copy

Abstract

Face detection is an interesting area of research in the application of computer vision and pattern recognition, especially during the last few years. in his research to filter selfie face images in search results based on hashtags on Instagram by combining web data extraction techniques and human face detection techniques using the Haar Cascade method and the experimental results show that the method applied produces an accuracy value of 71.48% for detecting human faces. Based on the results of human face detection, the Haar Cascade method can filter selfie facial images with an accuracy value of 64.6%. However, the face detection used by researchers was made only to meet system testing criteria. Therefore, it is necessary to apply face detection to extract a person's facial features which will be used as sample data for facial classification using CNN which is then applied to the Smart Attendance System so that this presence system is better and more perfect. The CNN architecture used is FaceNet. The FaceNet model that has been built is based on a configuration that has been trained using training data of 7,500 facial image data. The results of the FaceNet model training process on training data are 100,000 for accuracy and 100,000 for test. This proves that facial feature extracts using Haarcascade can be used as input for the FaceNet model.

Item Type: Thesis (Undergraduate)
Uncontrolled Keywords: Haar Cascade, deteksi wajah, ciri wajah, FaceNet, Smart Attendance System
Subjects: T Technology > T Technology (General) > T1-995 Technology (General)
Divisions: 09-Faculty of Computer Science > 55201-Informatics (S1)
Depositing User: Ubaidilah Al Bayu
Date Deposited: 26 Jan 2023 03:02
Last Modified: 26 Jan 2023 03:02
URI: http://repository.unsri.ac.id/id/eprint/87608

Actions (login required)

View Item View Item