Modulation and performance of synchronous demodulation for speech signal detection and dialect intelligibility

IF 1.5 Q2 ENGINEERING, MULTIDISCIPLINARY
R. Abbas, Hayder Almosa, Y. Harbi
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引用次数: 0

Abstract

Abstract Speech processing is one of the fundamental operations in computer science and it is particularly difficult to process and distinguish speech in different Arabic dialects when background noise is present. In any nation, communication skills are crucial. Pushing a button is all it takes for the typical person to make phone calls and leave voicemails but for telecommunications experts, the process is very different. We understand how communication actually works. The terms detection and demodulation are commonly used when addressing the full demodulation process. The procedures and circuits are substantially the same under both designations. As the name implies, demodulation is the opposite of modulation, which is applying a signal, such as an audio signal, to a carrier. The demodulation process isolates the output signal from the audio or other signal that was transmitted using amplitude shifts on the carrier. In this study, a system for distinguishing speech signals was developed using modulation and demodulation to transmit speech by extracting it from a variety of factors, the most significant of which is background noise in addition to a wide variety of dialects, which poses a significant challenge in speech processing. The proposed system was applied to a dataset that was created for a group of voices in different dialects, and by using important techniques, the noise accompanying the voices was deleted and then the voices were processed with other techniques such as modulation and demodulation to distinguish the dialect. The system has proven effective by distinguishing dialects.
语音信号检测和方言清晰度同步解调的调制与性能
摘要语音处理是计算机科学的基本操作之一,在存在背景噪声的情况下,处理和区分不同阿拉伯语方言的语音尤其困难。在任何国家,沟通技巧都至关重要。普通人只需按下一个按钮就可以打电话和留下语音邮件,但对于电信专家来说,这个过程却大不相同。我们了解沟通的实际运作方式。术语检测和解调通常在处理整个解调过程时使用。两种名称下的程序和电路基本相同。顾名思义,解调与调制相反,调制是将信号(如音频信号)应用于载波。解调过程将输出信号与使用载波上的幅度偏移传输的音频或其他信号隔离。在这项研究中,开发了一种识别语音信号的系统,该系统使用调制和解调从多种因素中提取语音来传输语音,其中最重要的是背景噪声以及各种方言,这对语音处理提出了重大挑战。将所提出的系统应用于为不同方言中的一组语音创建的数据集,并通过使用重要技术,删除伴随语音的噪声,然后使用调制和解调等其他技术对语音进行处理,以区分方言。通过区分方言,该系统已被证明是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Open Engineering
Open Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
3.90
自引率
0.00%
发文量
52
审稿时长
30 weeks
期刊介绍: Open Engineering publishes research results of wide interest in emerging interdisciplinary and traditional engineering fields, including: electrical and computer engineering, civil and environmental engineering, mechanical and aerospace engineering, material science and engineering. The journal is designed to facilitate the exchange of innovative and interdisciplinary ideas between researchers from different countries. Open Engineering is a peer-reviewed, English language journal. Researchers from non-English speaking regions are provided with free language correction by scientists who are native speakers. Additionally, each published article is widely promoted to researchers working in the same field.
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