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基于动态贝叶斯网络的语音识别及音素切分研究*
引用本文:孙阿利,蒋冬梅,吕国云,Hichem Sahli,Werner Verhelst.基于动态贝叶斯网络的语音识别及音素切分研究*[J].计算机应用研究,2007,24(10):104-106.
作者姓名:孙阿利  蒋冬梅  吕国云  Hichem Sahli  Werner Verhelst
作者单位:1. 西北工业大学,计算机学院,西安,710072
2. 比利时布鲁塞尔自由大学,电子与信息工程系,比利时
摘    要:研究了一种基于动态贝叶斯网络(dynamic bayesian networks, DBN)的语音识别建模方法,利用GMTK(graphical model tool kits)工具构建音素级音频流DBN语音训练和识别模型,同时与传统的基于隐马尔可夫的语音识别结果进行比较,并给出词与音素的切分结果.实验表明,在各种信噪比测试条件下,基于DBN的语音识别结果与基于HMM的语音识别结果相当,并表现出一定的抗噪性,音素的切分结果也比较准确.

关 键 词:动态贝叶斯网络  图模型  图模型工具包  动态贝叶斯网络  语音识别  音素  研究  segment  phoneme  continuous  speech  recognition  抗噪性  表现  测试条件  信噪比  实验  比较  结果  隐马尔可夫  识别模型  语音训练  音频流  graphical  model
文章编号:1001-3695(2007)10-0104-03
修稿时间:2006-07-042006-10-18

Research on DBN based continuous speech recognition and phoneme segment
SUN A li,JIANG Dong mei,LV Guo yun,Hichem Sahli,Werner Verhelst.Research on DBN based continuous speech recognition and phoneme segment[J].Application Research of Computers,2007,24(10):104-106.
Authors:SUN A li  JIANG Dong mei  LV Guo yun  Hichem Sahli  Werner Verhelst
Abstract:This paper described a dynamic Bayesian network (DBN) based technique on continuous speech recognition. The word recognition accuracies and phoneme segment accuracies of the DBN based system (implemented using the graphical mo del tool kit) were compared with those from classical HMM. Results show that under various SNRs, DBN based system and HMM based system has similarity performance for speech recognition and phoneme segment, especially in much lower SNR circumstance, DBN get even much better performance than HMM.
Keywords:
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