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ISI
2005
Springer

Selective Fusion for Speaker Verification in Surveillance

13 years 10 months ago
Selective Fusion for Speaker Verification in Surveillance
This paper presents an improved speaker verification technique that is especially appropriate for surveillance scenarios. The main idea is a metalearning scheme aimed at improving fusion of low- and high-level speech information. While some existing systems fuse several classifier outputs, the proposed method uses a selective fusion scheme that takes into account conveying channel, speaking style and speaker stress as estimated on the test utterance. Moreover, we show that simultaneously employing multi-resolution versions of regular classifiers boosts fusion performance. The proposed selective fusion method aided by multi-resolution classifiers decreases error rate by 30% over ordinary fusion.
Yosef A. Solewicz, Moshe Koppel
Added 27 Jun 2010
Updated 27 Jun 2010
Type Conference
Year 2005
Where ISI
Authors Yosef A. Solewicz, Moshe Koppel
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