shen07@interspeech_2007@ISCA

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#1 Improving phonotactic language recognition with acoustic adaptation [PDF] [Copy] [Kimi]

Authors: Wade Shen ; Douglas Reynolds

In recent evaluations of automatic language recognition systems, phonotactic approaches have proven highly effective [1][2]. However, as most of these systems rely on underlying ASR techniques to derive a phonetic tokenization, these techniques are potentially susceptible to acoustic variability from non-language sources (i.e. gender, speaker, channel, etc.). In this paper we apply techniques from ASR research to normalize and adapt HMM-based phonetic models to improve phonotactic language recognition performance. Experiments we conducted with these techniques show an EER reduction of 29% over traditional PRLM-based approaches.