Using prosodic and conversational features for high-performance speaker recognition: report from JHU WS'02

Barbara Peskin(International Computer Science Institute), Jiří Navrátil(IBM Research - Thomas J. Watson Research Center), Josh Abramson(York University), Douglas A. Jones(MIT Lincoln Laboratory), D. Klusacek(Charles University), D.A. Reynolds(MIT Lincoln Laboratory), Bing Xiang(Cornell University)
2003 IEEE International Conference on Acoustics, Speech, and Signal Processing, 2003. Proceedings. (ICASSP '03).
January 23, 2004
Cited by 75

Abstract

While there has been a long tradition of research seeking to use prosodic features, especially pitch, in speaker recognition systems, results have generally been disappointing when such features are used in isolation and only modest improvements have been seen when used in conjunction with traditional cepstral GMM systems. In contrast, we report here on work from the JHU 2002 Summer Workshop exploring a range of prosodic features, using as testbed the 2001 NIST Extended Data task. We examined a variety of modeling techniques, such as n-gram models of turn-level prosodic features and simple vectors of summary statistics per conversation side scored by k/sup th/ nearest-neighbor classifiers. We found that purely prosodic models were able to achieve equal error rates of under 10%, and yielded significant gains when combined with more traditional systems. We also report on exploratory work on "conversational" features, capturing properties of the interaction across conversation sides, such as turn-taking patterns.


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