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XIE Xiang, KUANG Jing-ming. Mandarin Digits Speech Recognition Using Support Vector Machines[J]. JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2005, 14(1): 9-12.
Citation: XIE Xiang, KUANG Jing-ming. Mandarin Digits Speech Recognition Using Support Vector Machines[J].JOURNAL OF BEIJING INSTITUTE OF TECHNOLOGY, 2005, 14(1): 9-12.

Mandarin Digits Speech Recognition Using Support Vector Machines

Funds:theNationalNaturalScienceFoundation(60372089)
  • Received Date:2003-08-28
  • A method of applying support vector machine(SVM) in speech recognition was proposed, and a speech recognition system for mandarin digits was built up by SVMs. In the system, vectors were linearly extracted from speech feature sequence to make up time-aligned input patterns for SVM, and the decisions of several 2-class SVM classifiers were employed for constructing an N-class classifier. Four kinds of SVM kernel functions were compared in the experiments of speaker-independent speech recognition of mandarin digits. And the kernel of radial basis function has the highest accurate rate of 99. 33%, which is better than that of the baseline system based on hidden Markov models(HMM)(97. 08%). And the experiments also show that SVM can outperform HMM especially when the samples for learning were very limited.
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  • [1]
    Sch lkopf B, Burges C J C, Smola A J. Adv ances in kernel methods)Support vector learning[M]. Cambr idge:M IT Press, 1999.
    [2]
    Vapnik V. T he nature of statistical learning t heory[M]. New Yo rk:Springer V er lag, 1995.
    [3]
    Joachims T. T ext catego rization with suppo rt vector machines:Learning w ith many relev ant featur es[Z]. 10thEur opean Confer ence o n M achine L ear ning, Chemnitz, DE, 1998.
    [4]
    Hear st M A, Sch lkopf B, Dumais S, et al. T rends andcontroversies)Support vector machines[J]. I EEE Intelligent Systems, 1998, 13(4):18-28.
    [5]
    Cun L Y, Jackel L D, Bottou L, et al. Comparison oflearning algor ithms for handwr itten digit recog nition[Z]. ICA NN?95, Nanterr e, France, 1995.
    [6]
    Chang C C, L in C J. L IBSV M:A librar y for suppor tv ector machines
    [EB/OL]. http:. w ww. csie. ntu. edu. tw/~cjlin/libsvm, 2001 06 19/2002-03-10.
    [7]
    F riedman J H. Another approach to polychotomous classification[R]. Stanford:Department of Statistics, Stanford University, 1996.
    [8]
    Y oung S, K ershaw D, Odell J, et al. T he HT K book(v3 0)[R]. Cambridge:U niversity of Cambridge Press, 2000.
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