Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep Learning

Facial recognition research has its challenges due to faces complexity, ranging from facial expressions and certain conditions that make facial recognition an exciting research experiment. Moreover, many-oriented applications of machine learning have moved to devices edge, and-based facial recogniti...

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Main Authors: Ragil Setiawan, Nurcahya Pradana Taufik Prakisya, Rosihan Ariyuana
Format: Article
Language:English
Published: Universitas Sebelas Maret 2023-12-01
Series:JIPTEK: Jurnal Ilmiah Pendidikan Teknik dan Kejuruan
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Online Access:https://jurnal.uns.ac.id/jptk/article/view/76556
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author Ragil Setiawan
Nurcahya Pradana Taufik Prakisya
Rosihan Ariyuana
author_facet Ragil Setiawan
Nurcahya Pradana Taufik Prakisya
Rosihan Ariyuana
author_sort Ragil Setiawan
collection DOAJ
description Facial recognition research has its challenges due to faces complexity, ranging from facial expressions and certain conditions that make facial recognition an exciting research experiment. Moreover, many-oriented applications of machine learning have moved to devices edge, and-based facial recognition is no exception mobile. Seeing the ongoing development of facial pattern recognition algorithms such as Viola Jones, Backpropagation, this research uses the MobileFaceNet  mobile CNN model which is currently popular to be implemented in the mobile-based facial recognition presence application at the Information and Computer Engineering Education (PTIK) FKIP UNS. The deep learning method is a method for understanding and classifying objects. In the developed application, a face is captured in an image. This research uses the help of the flutter framework and the Tensorflow Lite library to develop a presence application mobile facial recognition in real-time. This paper aims to determine the value of the memorization and generalization algorithms model of CNN MobileFaceNet  on the application.  A trial of the system has been carried out by involving 30 volunteers in the testing from 2016-2019 PTIK students by random sampling. Each test was carried out for 10 iterations. From the test results, the system memorization value is 84.5%. On the other hand, the generalization results get 70% in recognizing identical but not similar images correctly. In terms of memorization and generalization, these results are better than similar studies using backpropagation
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issn 1979-0031
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publisher Universitas Sebelas Maret
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spelling doaj-art-bb12333cedec4fd2ab1e0585bdd5ff692025-08-20T02:43:33ZengUniversitas Sebelas MaretJIPTEK: Jurnal Ilmiah Pendidikan Teknik dan Kejuruan1979-00312598-64302023-12-0117110.20961/jiptek.v17i1.7655639318Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep LearningRagil Setiawan0Nurcahya Pradana Taufik Prakisya1Rosihan Ariyuana2Universitas Sebelas MaretUniversitas Sebelas MaretUniversitas Sebelas MaretFacial recognition research has its challenges due to faces complexity, ranging from facial expressions and certain conditions that make facial recognition an exciting research experiment. Moreover, many-oriented applications of machine learning have moved to devices edge, and-based facial recognition is no exception mobile. Seeing the ongoing development of facial pattern recognition algorithms such as Viola Jones, Backpropagation, this research uses the MobileFaceNet  mobile CNN model which is currently popular to be implemented in the mobile-based facial recognition presence application at the Information and Computer Engineering Education (PTIK) FKIP UNS. The deep learning method is a method for understanding and classifying objects. In the developed application, a face is captured in an image. This research uses the help of the flutter framework and the Tensorflow Lite library to develop a presence application mobile facial recognition in real-time. This paper aims to determine the value of the memorization and generalization algorithms model of CNN MobileFaceNet  on the application.  A trial of the system has been carried out by involving 30 volunteers in the testing from 2016-2019 PTIK students by random sampling. Each test was carried out for 10 iterations. From the test results, the system memorization value is 84.5%. On the other hand, the generalization results get 70% in recognizing identical but not similar images correctly. In terms of memorization and generalization, these results are better than similar studies using backpropagationhttps://jurnal.uns.ac.id/jptk/article/view/76556deep learningframework flutterpengenalan wajahtensorflow lite
spellingShingle Ragil Setiawan
Nurcahya Pradana Taufik Prakisya
Rosihan Ariyuana
Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep Learning
JIPTEK: Jurnal Ilmiah Pendidikan Teknik dan Kejuruan
deep learning
framework flutter
pengenalan wajah
tensorflow lite
title Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep Learning
title_full Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep Learning
title_fullStr Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep Learning
title_full_unstemmed Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep Learning
title_short Rekayasa Perangkat Lunak Aplikasi Presensi Mobile Menggunakan Metode Deep Learning
title_sort rekayasa perangkat lunak aplikasi presensi mobile menggunakan metode deep learning
topic deep learning
framework flutter
pengenalan wajah
tensorflow lite
url https://jurnal.uns.ac.id/jptk/article/view/76556
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AT nurcahyapradanataufikprakisya rekayasaperangkatlunakaplikasipresensimobilemenggunakanmetodedeeplearning
AT rosihanariyuana rekayasaperangkatlunakaplikasipresensimobilemenggunakanmetodedeeplearning