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引用次数: 5

摘要

纯声学神经网络模型,特别是LSTM-RNN模型,在语言识别(LID)中显示出巨大的潜力。然而,尽管语音信息已经在传统的语音LID系统中得到了成功的应用,但大多数现有的神经LID模型在很大程度上忽略了语音信息。我们提出了一个手机感知神经LID架构,它是一个深度LSTM-RNN LID系统,但接受基于rnn的ASR系统的输出。通过利用语音知识,可以显著提高语音识别的性能。有趣的是,即使测试语言不参与ASR训练,语音知识仍然有很大的贡献。我们在Babel语料库中的四种语言上进行的实验表明,电话感知方法非常有效。
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Phone-aware neural language identification
Pure acoustic neural models, particularly the LSTM-RNN model, have shown great potential in language identification (LID). However, the phonetic information has been largely overlooked by most of existing neural LID models, although this information has been used in the conventional phonetic LID systems with a great success. We present a phone- aware neural LID architecture, which is a deep LSTM-RNN LID system but accepts output from an RNN-based ASR system. By utilizing the phonetic knowledge, the LID performance can be significantly improved. Interestingly, even if the test language is not involved in the ASR training, the phonetic knowledge still presents a large contribution. Our experiments conducted on four languages within the Babel corpus demonstrated that the phone-aware approach is highly effective.
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