Task analysis methods for data selection in task adaptation on mandarin isolated word recognition

Z.Y. He, W. Li, J. Wu
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Abstract

This paper studies the performance of different task analysis methods for data selection in task adaptation on Mandarin isolated word recognition. Two key issues are investigated including 1) the type of the coverage units; 2) the method to generate the distribution of the acoustic units (coverage units) by task analysis. For the first issue, three coverage units namely word, syllable and right-context-initial/toned-final (RCI/TF) are used and compared which cover different context information. For the second issue, the traditional coverage unit balanced task analysis approach is compared with a new developed automatic analysis of vocabulary confusability. In our experiments on Mandarin isolated word speech, it is observed that performance with task analysis is much better than without task analysis. Comparing with RCI/TF and syllable, the word performs better as the coverage unit due to more context information involved. Moreover the active approach performs worse than traditional coverage unit balanced approach which means more accurate approach for the confusability analysis is necessary.
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汉语孤立词识别任务自适应数据选择的任务分析方法
本文研究了不同任务分析方法在汉语孤立词识别任务自适应中的数据选择性能。研究了两个关键问题,包括:1)覆盖单元的类型;2)通过任务分析生成声单元(覆盖单元)分布的方法。在第一期文章中,本文比较了单词、音节和右语境首/音末(RCI/TF)三个覆盖单元,分别覆盖了不同的语境信息。第二,将传统的覆盖单元平衡任务分析方法与新开发的词汇混淆性自动分析方法进行了比较。在我们对普通话孤立词语音的实验中,我们观察到有任务分析的表现比没有任务分析的表现要好得多。与RCI/TF和音节相比,单词作为覆盖单元的表现更好,因为它包含了更多的上下文信息。此外,主动方法的性能比传统的覆盖单元平衡方法差,这意味着需要更精确的混淆性分析方法。
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