机构地区:[1]Department of Information Science and Engineering, Xinjiang University, Urumqi 830046, China [2]Laboratory of Multi-Lingual Information Technology, Xinjiang University, Urumqi 830046, China
出 处:《The Journal of China Universities of Posts and Telecommunications》2012年第1期94-100,共7页中国邮电高校学报(英文版)
基 金:supported by the National Natural Science Foundation of China (60965002);the College Research Project of Xinjiang (XJEDU2008S15);the Start-up Fund Research for Ph.D.in Xinjiang University (BS090143)
摘 要:Tone model (TM) integration is an important task for mandarin speech recognition. It has been proved to be effective to use discriminatively trained scaling factors when integrating TM scores into multi-pass speech recognition. Moreover, context-dependent (CD) scaling can be applied for better interpolation between the models. One limitation of this approach is a large number of parameters will be introduced, which makes the technique prone to overtraining. In this paper, we propose to induce context-dependent model weights by using automatically derived phonetic decision trees. Question at each tree node is chosen to minimize the expected recognition error on the training data. First order approximation of the minimum phone error (MPE) objective function is used for question pruning to make tree building efficient. Experimental results on continuous mandarin speech recognition show the method is capable of inducing the most crucial phonetic contexts and obtains significant error reduction with far fewer parameters, compared with that obtained by using manually designed context-dependent scaling parameters.Tone model (TM) integration is an important task for mandarin speech recognition. It has been proved to be effective to use discriminatively trained scaling factors when integrating TM scores into multi-pass speech recognition. Moreover, context-dependent (CD) scaling can be applied for better interpolation between the models. One limitation of this approach is a large number of parameters will be introduced, which makes the technique prone to overtraining. In this paper, we propose to induce context-dependent model weights by using automatically derived phonetic decision trees. Question at each tree node is chosen to minimize the expected recognition error on the training data. First order approximation of the minimum phone error (MPE) objective function is used for question pruning to make tree building efficient. Experimental results on continuous mandarin speech recognition show the method is capable of inducing the most crucial phonetic contexts and obtains significant error reduction with far fewer parameters, compared with that obtained by using manually designed context-dependent scaling parameters.
关 键 词:TM integration MPE decision tree mandarin speech recognition context-dependent
分 类 号:TP311[自动化与计算机技术—计算机软件与理论] TN912.34[自动化与计算机技术—计算机科学与技术]
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