2014
DOI: 10.1007/978-3-662-44415-3_47
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Unifying Probabilistic Linear Discriminant Analysis Variants in Biometric Authentication

Abstract: Abstract. Probabilistic linear discriminant analysis (PLDA) is commonly used in biometric authentication. We review three PLDA variants -standard, simplified and two-covariance -and show how they are related. These clarifications are important because the variants were introduced in literature without argumenting their benefits. We analyse their predictive power, covariance structure and provide scalable algorithms for straightforward implementation of all the three variants. Experiments involve state-of-the-a… Show more

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Cited by 79 publications
(46 citation statements)
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(17 reference statements)
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“…While there are several variants of the PLDA algorithm [17], a generic implementation models the interclass and intraclass variances as follows…”
Section: Plda Modellingmentioning
confidence: 99%
“…While there are several variants of the PLDA algorithm [17], a generic implementation models the interclass and intraclass variances as follows…”
Section: Plda Modellingmentioning
confidence: 99%
“…Matching between a test utterance and a target speaker can be done using either a fast scoring technique based on cosine distance or on probabilistic linear discriminant analysis (PLDA) [12], [14] based scoring. The PLDA model splits the total data variability into within-individual and betweenindividual variabilities, both residing in small-dimensional subspaces.…”
Section: Automatic Speaker Verification (Sv)mentioning
confidence: 99%
“…The PLDA model splits the total data variability into within-individual and betweenindividual variabilities, both residing in small-dimensional subspaces. Originally introduced for face recognition, PLDA has become a standard in speaker recognition, and details can be found in [14]. Using φ to denote the i-vector extracted from a given speech recording, in a verification scenario, there are two possible hypotheses: 1) φ test and φ enrol share the same class, and 2) φ test and φ enrol are from different classes.…”
Section: Automatic Speaker Verification (Sv)mentioning
confidence: 99%
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“…If we go even further and set both subspace matrices V and U to have the full rank we get so called two-covariance model [35]. Comparison of all three PLDA models as well as the EM-algorithms to train them are presented in [36].…”
Section: B Total Variability Frameworkmentioning
confidence: 99%