Fusing generative and discriminative models for Chinese dialect identification
作者
Mingliang Gu,Yuguo Xia
标识
DOI:10.1109/icalip.2008.4590173
摘要
This paper presents a fusing framework of discriminative and generative models for Chinese dialect identification. The generative models are employed to produce language feature vectors and the discriminative models are used to make classification. Four Chinese dialects is tested with this system. The experimental results showed that the proposed system outperformed the GMM based system. Meanwhile the SVM based discriminative methods has more powerful discriminative ability than ANN based one.