SDCLASSep 28, 2018

Spoken Pass-Phrase Verification in the i-vector Space

arXiv:1809.11068v18 citations
Originality Synthesis-oriented
AI Analysis

This incremental work improves verification accuracy for applications like liveness detection and speaker verification, but does not introduce a fundamentally new approach.

The paper tackled spoken pass-phrase verification by applying i-vector extraction techniques from text-dependent speaker verification to speaker-independent classification, achieving superior results on RSR2015 and RedDots databases compared to prior work.

The task of spoken pass-phrase verification is to decide whether a test utterance contains the same phrase as given enrollment utterances. Beside other applications, pass-phrase verification can complement an independent speaker verification subsystem in text-dependent speaker verification. It can also be used for liveness detection by verifying that the user is able to correctly respond to a randomly prompted phrase. In this paper, we build on our previous work on i-vector based text-dependent speaker verification, where we have shown that i-vectors extracted using phrase specific Hidden Markov Models (HMMs) or using Deep Neural Network (DNN) based bottle-neck (BN) features help to reject utterances with wrong pass-phrases. We apply the same i-vector extraction techniques to the stand-alone task of speaker-independent spoken pass-phrase classification and verification. The experiments on RSR2015 and RedDots databases show that very simple scoring techniques (e.g. cosine distance scoring) applied to such i-vectors can provide results superior to those previously published on the same data.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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