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UEU » Master Theses » Magister Ilmu Komputer
Posted by [email protected] at 23/10/2024 15:20:41  •  66 Views


SISTEM PENGKOREKSI BACAAN QURAN MENGGUNAKAN DEEPSPEECH

Created by :
HAJON MAHDY MAHMUDIN ( 20200804027 )



SubjectSISTEM PENGKOREKSI
BACAAN QURAN
DEEPSPEECH
Alt. Subject CORRECTION SYSTEM
QURAN READING
DEEPSPEECH
KeywordAutomatic Speech Recognition (ASR)
Long Short Term Memmory (LSTM)
Pembelajaran Al-Quran
Recurrent Neural Network (RNN)
Siamese Classifier.

Description:

Penelitian ini bertujuan untuk mengembangkan model klasifikasi audio efektif dalam mengenali kesamaan antara ayat-ayat Al-Quran yang dibacakan oleh berbagai pengguna. Kami membandingkan dua fitur ekstraksi, yaitu MFCC dan MFSC, dalam lima model yang berbeda, termasuk Siamese Classifier dan MaLSTM. Dataset terdiri dari 37 surah Al-Quran dan sampel suara pengguna. Hasil eksperimen menunjukkan model B dengan fitur MFCC memiliki kinerja terbaik, mencapai F1-Score 0.93 pada dataset test, sementara model dengan fitur MFSC mencapai F1-Score 0.94 pada dataset inference. Keterbatasan penelitian ini termasuk jumlah sampel suara pengguna yang terbatas dan variasi cara membaca ayat-ayat. Diperlukan lebih banyak data untuk meningkatkan keakuratan model. Disarankan untuk menggunakan fitur MFCC atau MFSC sesuai kebutuhan aplikasi. Model B atau C dapat dijadikan pilihan terbaik dalam pengenalan kesamaan ayatayat Al-Quran secara audio.

Contributor:
  1. Habibullah Akbar, S.Si., M.Sc., Ph.D.
Date Create:23/10/2024
Type:Text
Format:PDF
Language:Indonesian
Identifier:UEU-Master-20200804027
Collection ID:20200804027


Source :
Master Theses Of Computer Science

Relation Collection:
Fakultas Ilmu Komputer

Coverage :
Civitas Akademika Universitas Esa Unggul

Rights :
@2024 Perpustakaan Universitas Esa Unggul


Publication URL :
https://digilib.esaunggul.ac.id/sistem-pengkoreksi-bacaan-quranmenggunakan-deepspeech-36348.html




[ Free Download - Free for All ]

  1.  UEU-Master-36348-COVER.Image.Marked.pdf - 310 KB
  2.  UEU-Master-36348-HALAMAN PENGESAHAN.Image.Marked.pdf - 633 KB
  3.  UEU-Master-36348-HALAMAN PERNYATAAN PERSETUJUAN PUBLIKASI.Image.Marked.pdf - 315 KB
  4.  UEU-Master-36348-ABSTRAK.Image.Marked.pdf - 305 KB
  5.  UEU-Master-36348-KATA PENGANTAR.Image.Marked.pdf - 281 KB
  6.  UEU-Master-36348-DAFATAR ISI.Image.Marked.pdf - 325 KB
  7.  UEU-Master-36348-DAFTAR PUSTAKA.Image.Marked.pdf - 313 KB
  8.  UEU-Master-36348-BAB1.Image.Marked.pdf - 365 KB

[ FullText Content - Please, register first ]

  1. UEU-Master-36348-BAB2.Image.Marked.pdf - 1066 KB
  2. UEU-Master-36348-BAB3.Image.Marked.pdf - 398 KB
  3. UEU-Master-36348-BAB4.Image.Marked.pdf - 956 KB
  4. UEU-Master-36348-BAB5.Image.Marked.pdf - 286 KB

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(ASR) , (LSTM) , (RNN) , Al-Quran , Automatic , Automatic Speech Recognition (ASR) , Classifier. , Long , Long Short Term Memmory (LSTM) , Memmory , Network , Neural , Pembelajaran , Pembelajaran Al-Quran , Recognition , Recurrent , Recurrent Neural Network (RNN) , Short , Siamese , Siamese Classifier. , Speech , Term



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