Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition Technology

This research discusses digital signal processing in the context of developing deep learning-based speech recognition technology. Given the increasing demand for accurate and efficient speech recognition systems, digital signal processing techniques are essential. The research method used is an expe...

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Main Authors: Dita Novita Sari, Danang Kusnadi, Ricco Herdiyan Saputra, Mujeeb Ullah Khan
Format: Article
Language:English
Published: Universitas Islam Negeri Raden Intan Lampung 2024-06-01
Series:International Journal of Electronics and Communications System
Subjects:
Online Access:https://ejournal.radenintan.ac.id/index.php/IJECS/article/view/22918
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author Dita Novita Sari
Danang Kusnadi
Ricco Herdiyan Saputra
Mujeeb Ullah Khan
author_facet Dita Novita Sari
Danang Kusnadi
Ricco Herdiyan Saputra
Mujeeb Ullah Khan
author_sort Dita Novita Sari
collection DOAJ
description This research discusses digital signal processing in the context of developing deep learning-based speech recognition technology. Given the increasing demand for accurate and efficient speech recognition systems, digital signal processing techniques are essential. The research method used is an experimental method with a quantitative approach. This research method consists of several stages: introduction, research design, data collection, data preprocessing, Deep Learning Model Development, performance training and evaluation, experiments and testing, and data analysis. These findings are expected to contribute to developing more sophisticated and applicable speech recognition systems in various fields. For example, in virtual assistants such as Siri and Google Assistant, improved speech recognition accuracy will allow for more natural interactions and faster responses, improving the user experience. This technology can be used in security systems for safer and more reliable voice authentication, replacing or supplementing passwords and fingerprints. Additionally, in accessibility technology, more accurate voice recognition will be particularly beneficial for individuals with visual impairments or mobility, allowing them to control devices and access information with just voice commands. Other benefits include improvements in automated phone apps, automatic transcription for meetings or conferences, and the development of smart home devices that can be fully voice-operated.
format Article
id doaj-art-58b0ac044c2e4dce8a03fc41b68c54f2
institution OA Journals
issn 2798-2610
language English
publishDate 2024-06-01
publisher Universitas Islam Negeri Raden Intan Lampung
record_format Article
series International Journal of Electronics and Communications System
spelling doaj-art-58b0ac044c2e4dce8a03fc41b68c54f22025-08-20T02:16:56ZengUniversitas Islam Negeri Raden Intan LampungInternational Journal of Electronics and Communications System2798-26102024-06-0141274110.24042/ijecs.v4i1.229186416Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition TechnologyDita Novita Sari0Danang Kusnadi1Ricco Herdiyan Saputra2Mujeeb Ullah Khan3Institut Bakti NusantaraInstitut Bakti NusantaraInstitut Bakti NusantaraGovt Degree College TakhtabandThis research discusses digital signal processing in the context of developing deep learning-based speech recognition technology. Given the increasing demand for accurate and efficient speech recognition systems, digital signal processing techniques are essential. The research method used is an experimental method with a quantitative approach. This research method consists of several stages: introduction, research design, data collection, data preprocessing, Deep Learning Model Development, performance training and evaluation, experiments and testing, and data analysis. These findings are expected to contribute to developing more sophisticated and applicable speech recognition systems in various fields. For example, in virtual assistants such as Siri and Google Assistant, improved speech recognition accuracy will allow for more natural interactions and faster responses, improving the user experience. This technology can be used in security systems for safer and more reliable voice authentication, replacing or supplementing passwords and fingerprints. Additionally, in accessibility technology, more accurate voice recognition will be particularly beneficial for individuals with visual impairments or mobility, allowing them to control devices and access information with just voice commands. Other benefits include improvements in automated phone apps, automatic transcription for meetings or conferences, and the development of smart home devices that can be fully voice-operated.https://ejournal.radenintan.ac.id/index.php/IJECS/article/view/22918digital signal processingdeep learningspeech recognitiontechnology.
spellingShingle Dita Novita Sari
Danang Kusnadi
Ricco Herdiyan Saputra
Mujeeb Ullah Khan
Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition Technology
International Journal of Electronics and Communications System
digital signal processing
deep learning
speech recognition
technology.
title Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition Technology
title_full Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition Technology
title_fullStr Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition Technology
title_full_unstemmed Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition Technology
title_short Digital Signal Processing for The Development of Deep Learning-Based Speech Recognition Technology
title_sort digital signal processing for the development of deep learning based speech recognition technology
topic digital signal processing
deep learning
speech recognition
technology.
url https://ejournal.radenintan.ac.id/index.php/IJECS/article/view/22918
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AT danangkusnadi digitalsignalprocessingforthedevelopmentofdeeplearningbasedspeechrecognitiontechnology
AT riccoherdiyansaputra digitalsignalprocessingforthedevelopmentofdeeplearningbasedspeechrecognitiontechnology
AT mujeebullahkhan digitalsignalprocessingforthedevelopmentofdeeplearningbasedspeechrecognitiontechnology