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Scoring of Large-Margin Embeddings for Speaker Verification: Cosine or PLDA?

Qiongqiong Wang, Kong Aik Lee, Tianchi Liu

2022Interspeech 202221 citationsDOI

Abstract

The emergence of large-margin softmax cross-entropy losses in training deep speaker embedding neural networks has triggered a gradual shift from parametric back-ends to a simpler cosine similarity measure for speaker verification. Popular parametric back-ends include the probabilistic linear discriminant analysis (PLDA) and its variants. This paper investigates the properties of margin-based cross-entropy losses leading to such a shift and aims to find scoring back-ends best suited for speaker verification. In addition, we revisit the pre-processing techniques which have been widely used in the past and assess their effectiveness on large-margin embeddings. Experiments on the state-of-the-art ECAPA-TDNN networks trained with various large-margin softmax cross-entropy losses show a substantial increment in intra-speaker compactness making the conventional PLDA superfluous. In this regard, we found that constraining the within-speaker covariance matrix could improve the performance of the PLDA. It is demonstrated through a series of experiments on the VoxCeleb-1 and SITW core-core test sets with 40.8% equal error rate (EER) reduction and 35.1% minimum detection cost (minDCF) reduction. It also outperforms cosine scoring consistently with reductions in EER and minDCF by 10.9% and 4.9%, respectively.

Topics & Concepts

Softmax functionComputer scienceSpeaker verificationMargin (machine learning)Pattern recognition (psychology)Speech recognitionArtificial intelligenceCosine similarityWord error rateParametric statisticsTrigonometric functionsProbabilistic logicCross entropyArtificial neural networkSpeaker recognitionMathematicsMachine learningStatisticsGeometrySpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing