Penerapan Model Fountain Untuk PengPembangan Aplikasi Text Recognition Dan Text To Speech Berbasis Android Menggunakan Flutter

research
  • 27 May
  • 2022

Penerapan Model Fountain Untuk PengPembangan Aplikasi Text Recognition Dan Text To Speech Berbasis Android Menggunakan Flutter

The implementation of Artificial Intelligence or artificial intelligence provides many benefits to human life. Researchers utilizing the branch of Artificial Intelligence to develop the application. The purpose of this study is to develop an app with the name of the ICSApp (I Can See Application) to change or convert images of text into speech. The process of change or conversion is going through several stages, including the process of text recognition to read the characters in a document and text to speech to convert text into speech. The application of the model fountain in the development of the application ICSApp very efficient because this model has a repetitive nature and its ability to mimic the development of systems that exist in the real world and not focusing only on one of the stages of the course. Using the framework flutter and dart as a programming language as well as utilizing firebase MLKit for application development. Black box testing is used to test the application, so the application can run as expected. Application ICSApp very easy to use, to install the application at least the android version is version 5.0 (Lollipop). To use ICSApp user can take an image from the camera and gallery of the smartphone and the output that is produced in the form of the appearance of the text which then emits sound in the form of greeting in Indonesian, English, and Arabic as desired. The application is expected to help the blind and illiteracy as well as impaired to get the information easily.

REFERENSI

  1. Andayu, N. P. (2013). Perancangan Text To Speech Converter Engine Dalam Pengucapan Kata Berbahasa Arab Sehari-Hari. JUSTIN, 1(3).
  2. Apriyanti, K., Widodo, T. W. (2016). Implementasi Optical Character Recognition Berbasis Backpropagation untuk Text to Speech Perangkat Android. IJEIS, 6(1), 13–24.
  3. Aryadi, R., Suyanto, S., Widodo, W. (2020). Aplikasi Testing Interface Video Graphics Array Card Menggunakan Vb.Net. Jurnal SIBERNETIKA, 5(2), 209–215.
  4. Bachtiar, Miftachul, R., Yulianton, H. (2017). Rancang Bangun Aplikasi Text To Speech Sebagai Pembelajaran Bahasa Inggris Untuk Tuna Wicara. Dinamika Informatika, 9(2), 56–62.
  5. Dewanto, I. J. (2004). System Development Life Cycle Dengan Beberapa Pendekatan. Jurnal FASILKOM, 2(1), 39–47.
  6. Dicoding, I. (2020). Apa itu Firebase? Pengertian, Jenis-Jenis, dan Fungsi Kegunaannya. diakses 19 Februari 2021,dari https://www.dicoding.com/blog/apa-itu-firebase-pengertian-jenis-jenis-dan-fungsi-kegunaannya/
  7. Firebase, G. (2021). ML Kit for Firebase. iakses 19 Februari 2021,dari https://firebase.google.com/docs/ml-kit Flutter.dev. (2021).
  8. About Flutter. iakses 19 Februari 2021, dari https://flutter.dev/?gclid=Cj0KCQiApsiBBhCKARIsAN8o_4iNUpfhCJzj4PTlACOywSXCF9Z5pSitXDm tQSP1-C7Tt-wpekoNKZYaAkQXEALw_wcB&gclsrc=aw.ds
  9. George, R., Armarego, J., Yogesan, K. (2005). The reengineering of a software system for glaucoma analysis. Computer Methods and Programs in Biomedicine, 97–109. https://doi.org/10.1016/j.cmpb.2005.01.002
  10. Ginting, S., Harahap, F. (2020). Penggunaan Mobile Vision Api Untuk Pengenalan Teks Dalam Sebuah ImageBerbasis Android. Jurnal Fakultas Teknik Dan Ilmu Komputer, 1(1), 1143–1152.
  11. Ichwan, M., Gustiana, M., Syafiudin, A. (2018). Implementasi Metoda Unit Selection Synthesizer Dalam Pembuatan Speech Synthesizer Suara Suling Recorder. Multimedia Artificial Intellegence Networking Database Journal, 3(1), 64–78.
  12. Karina, W.C. (2013). Analisis dan Perancangan Aplikasi Mobile Panduan Transportasi Berbasis Android di Bali. STMIK AMIKOM Yogyakarta.
  13. Lienhart, R., Stuber, F. (2015). Automatic Text Recognition in Digital Videos. Http://Proceedings.Spiedigitallibrary.Org, 2666, 180–188.
  14. Muhardian, A. (2018). No Title. Retrieved February 19, 2021, from https://www.petanikode.com/belajar-dart/
  15. Putra, A. (2017). Mengenal Flutter Mobile App SDK. Retrieved February 20, 2021, from https://medium.com/@putraxor/mengenal-flutter-mobile-app-sdk-9a5ca88e705b
  16. Santoso, S., Surjawan, Jahja, D., & Handoyo, Darmawan, E. (2020). Pengembangan Sistem Informasi Tukar Barang Untuk Pemanfaatan Barang Tidak Terpakai dengan Flutter Framework. Jurnal Teknik Informatika Dan Sistem Informasi, 6(3), 589–598. https://doi.org/http://dx.doi.org/10.28932/jutisi.v6i3.3071
  17. Sari, I. (2019). Aplikasi Kamus Bahasa inggris dilengkapi dengan Text to Speech Berbasis Android. Jurnal Penelitian Teknik Informatika, 1(April 2018), 28–30.
  18. Wati, R., Ernawati, S. (2018). Perancangan Aplikasi Kamus Bahasa Jawa-Indonesia Berbasis Android. Jurnal Techno Nusa Mandiri, 15(2), 93–98.
  19. Ye, Q., Doermann, D. (2015). Text Detection and Recognition in Imagery : A Survey. IEEE Transactions on Pattern Analysis and Machine Intelligence, 37(7), 1480–1500