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Factor Analysis for Language Identification Based on Phoneme Recognition |
ZHONG Hai-Bing, SONG Yan, DAI Li-Rong |
iFlyTek Speech Laboratory,Department of Electronic Engineering and Information Science,University of Science and Technology of China,Hefei 230027 |
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Abstract In the phoneme recognition based language identification system, the key issue is whether the tokens or the token sequence can reflect the language related information or not. However, it is observed that for certain utterance, the noise in the output token sequence from the phone recognizer is introduced due to the channel, speaker and background clutters. To address this problem, each utterance is represented in n-gram vector. And in this vector space, the factor analysis is applied to model the noise subspace, which will be reduced in final modeling process. The experiment results on NIST LRE 2007 show that the proposed method can outperform the existing phone recognition based language identification system. In 30s evaluation task, the equal error rate (EER) of recognition reduces relatively about 14.4% against the baseline phone recognition followed by language modeling (PRLM) system, while about 12.9% against the baseline phone recognition followed by support vector machine (PRSVM) system.
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Received: 26 July 2010
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