首页> 外文会议>2017 IEEE Automatic Speech Recognition and Understanding Workshop >Improving native language (L1) identifation with better VAD and TDNN trained separately on native and non-native English corpora
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Improving native language (L1) identifation with better VAD and TDNN trained separately on native and non-native English corpora

机译:通过在本地和非本地英语语料库上分别进行训练的更好的VAD和TDNN改善本地语言(L1)识别

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Identifying a speaker's native language (L1), i.e., mother tongue, based upon non-native English (L2) speech input, is both challenging and useful for many human-machine voice interface applications, e.g., computer assisted language learning (CALL). In this paper, we improve our sub-phone TDNN based i-vector approach to L1 recognition with a more accurate TDNN-derived VAD and a highly discriminative classifier. Two TDNNs are separately trained on native and non-native English, LVCSR corpora, for contrasting their corresponding sub-phone posteriors and resultant supervectors. The derived i-vectors are then exploited for improving the performance further. Experimental results on a database of 25 L1s show a 3.1% identification rate improvement, from 78.7% to 81.8%, compared with a high performance baseline system which has already achieved the best published results on the 2016 ComParE corpus of only 11 L1s. The statistical analysis of the features used in our system provides useful findings, e.g. pronunciation similarity among the non-native English speakers with different L1s, for research on second-language (L2) learning and assessment.
机译:基于非母语英语(L2)语音输入来识别说话者的母语(L1),即母语,对于许多人机语音界面应用(例如计算机辅助语言学习(CALL))既具有挑战性又有用。在本文中,我们使用更准确的TDNN衍生的VAD和高度区分性的分类器,改进了基于子电话TDNN的i-vector方法来进行L1识别。两个TDNN分别接受了本机和非本机英语LVCSR语料库的训练,以对比它们相应的子电话后代和所得的超向量。然后,利用导出的i向量进一步改善性能。在25个L1的数据库上的实验结果显示,与高性能基准系统相比,其识别率从78.7%提升到了81.8%,与之相比,高性能基准系统已经在2016年ComParE语料库中获得了最佳的发布结果。只有11个L1。我们系统中使用的功能的统计分析提供了有用的发现,例如具有不同母语水平的非英语母语者之间的发音相似度,用于第二语言(L2)学习和评估的研究。

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