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Improving Language Recognition with Multilingual Phone Recognition and Speaker Adaptation Transforms

机译:通过多语言电话识别和说话人适应转换来改善语言识别

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摘要

We investigate a variety of methods for improving language recognition accuracy based on techniques in speech recognition, and in some cases borrowed from speaker recognition. First, we look at the question of language-dependent versus language-independent phone recognition for phonotactic (PRLM) language recognizers, and find that language-independent recognizers give superior performance in both PRLM and PPRLM systems. We then investigate ways to use speaker adaptation (MLLR) transforms as a complementary feature for language characterization. Borrowing from speech recognition, we find that both PRLM and MLLR systems can be improved with the inclusion of discriminatively trained multilayer perceptrons as front ends. Finally, we compare language models to support vector machines as a modeling approach for phonotactic language recognition, and find them to be potentially superior, and surprisingly complementary.
机译:我们研究了基于语音识别技术的各种提高语言识别准确度的方法,在某些情况下是从说话者识别中借用的。首先,我们研究了针对音律(PRLM)语言识别器的语言依赖与语言独立的电话识别的问题,发现与语言无关的识别器在PRLM和PPRLM系统中均具有出色的性能。然后,我们研究使用说话人适应(MLLR)变换作为语言表征的补充功能的方法。从语音识别中借用,我们发现可以通过使用经过区分训练的多层感知器作为前端来改进PRLM和MLLR系统。最后,我们比较了语言模型以支持矢量机,将其作为音位法语言识别的建模方法,发现它们具有潜在的优越性,并且令人惊讶地具有互补性。

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