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采用非监督得分规整和因子分析的说话人确认
引用本文:郭武,李轶杰,戴礼荣,王仁华.采用非监督得分规整和因子分析的说话人确认[J].电子学报,2009,37(4):776-779.
作者姓名:郭武  李轶杰  戴礼荣  王仁华
作者单位:中国科技大学电子工程与信息科学系,安徽,合肥,230027
基金项目:微软基金,中国科技大学青年教师基金 
摘    要: 在文本无关的说话人确认中,规整算法能够有效地调整测试得分的分布.另外,利用前面已经得到的测试语句的得分来调整规整的参数可以取得更好的效果,这种规整叫做非监督得分规整.在本文中,借用开发集得分来建立说话人和冒认者得分的两个先验高斯分布函数,在实际的测试中,利用最大后验概率准则来对规整的模型参数进行调整.在采用因子分析的情况下,在NIST 2006说话人识别测试1conv4w-1conv4w数据库上,能够取得等错误率5.26%.

关 键 词:说话人确认  联合因子分析  非监督得分规整
收稿时间:2007-10-15

Speaker Verification Based on Unsupervised Normalization and Factor Analysis
GUO Wu,LI Yi-jie,DAI Li-rong,WANG Ren-hua.Speaker Verification Based on Unsupervised Normalization and Factor Analysis[J].Acta Electronica Sinica,2009,37(4):776-779.
Authors:GUO Wu  LI Yi-jie  DAI Li-rong  WANG Ren-hua
Affiliation:Department of Electronic Engineering and Information Science;University of Science and Technology of China;Hefei;Anhui 230027;China
Abstract:In the text-independent speaker verification,the normalization algorithm can adjust the score distribution.The previous test scores can be used to update the parameters of the normalization,which is defined as unsupervised score normalization in this paper.The scores distributions of the target and impostor in the development corpus are set up as a prior,and the parameters of normalization are updated using the maximum a posterior(MAP)algorithm in each test process.In the NIST 2006 speaker recognition evalu...
Keywords:speaker verification  joint factor analysis  unsupervised score normalization  
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