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ICASSP
2011
IEEE

Exploring nuisance attribute projection and score normalization for GLDS-SVM based automatic mispronunciation detection method

12 years 8 months ago
Exploring nuisance attribute projection and score normalization for GLDS-SVM based automatic mispronunciation detection method
In the task of mispronunciation detection, the cross-speaker degradation and some other confusing nuisances are the challenging problems demanding prompt solution. In this paper, we will attempt to remove the non-pronunciation variations in the GLDS-SVM expansion space by using nuisance attribute projection strategy, in order to increase the separating capacity between different phoneme instances. Moreover, different kinds of score normalization methods with softmax, posterior probability vector (PPV), Z-norm and T-norm are comparatively discussed. The experiments on three kinds of speech corpora demonstrate the effectiveness of the above methods, and the performance mprovement is not very significant, but sustainable.i
Hongyan Li, Shen Huang, Shijin Wang, Jiaen Liang,
Added 20 Aug 2011
Updated 20 Aug 2011
Type Journal
Year 2011
Where ICASSP
Authors Hongyan Li, Shen Huang, Shijin Wang, Jiaen Liang, Bo Xu
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