2022
DOI: 10.1109/access.2022.3206541
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A Survey on Text-Dependent and Text-Independent Speaker Verification

Abstract: Speaker verification (SV) aims to detect an individual's identity from his/her voice. SV has been successfully applied in various areas such as access control, remote service customization, financial transactions, etc. Depending on whether the text content is pre-defined or not, SV can be text-dependent or text-independent. This paper reviews recent research on text-dependent SV (TD-SV) and text-independent SV (TI-SV). Because most modern SV systems apply deep learning methods to boost performance, we focus on… Show more

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Cited by 12 publications
(1 citation statement)
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References 77 publications
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“…Due to the popularity, this study aims to apply appropriate speech pre-processing, extract LPC and MFCC features, and compare their performance using simple discriminant analysis (DA) as the classifier for text-independent context. Compared to a text-dependent, a text-independent ASpkR is more challenging and should work better if the system is trained using long utterances to suppress vast lexicon variability adverse effects [10][11]. For that purpose, this study combined a list of isolated words (short utterances) and sentences (long utterances) in the development of the system for Malaysian English accents database [12].…”
Section: Introductionmentioning
confidence: 99%
“…Due to the popularity, this study aims to apply appropriate speech pre-processing, extract LPC and MFCC features, and compare their performance using simple discriminant analysis (DA) as the classifier for text-independent context. Compared to a text-dependent, a text-independent ASpkR is more challenging and should work better if the system is trained using long utterances to suppress vast lexicon variability adverse effects [10][11]. For that purpose, this study combined a list of isolated words (short utterances) and sentences (long utterances) in the development of the system for Malaysian English accents database [12].…”
Section: Introductionmentioning
confidence: 99%