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Evaluation of Tree-trellis based Decoding in Over-million LVCSR

机译:百万级LVCSR中基于树格的解码评估

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Very large vocabulary continuous speech recognition (CSR) that can recognize every sentence is one of important goals in speech recognition. Several attempts have been made to achieve very large vocabulary CSR. However, very large vocabulary CSR using a tree-trellis based decoder has not been reported. We report the performance evaluation and improvement of the "Julius" tree-trellis based decoder in large vocabulary CSR (LVCSR) involving more than one million vocabulary, referred to here as over-million LVCSR. Experiments indicated that Julius achieved a word accuracy of about 91% and a real time factor of about 2 in over-million LVCSR for Japanese newspaper speech transcription.
机译:可以识别每个句子的超大词汇量连续语音识别(CSR)是语音识别的重要目标之一。为实现非常大的词汇量CSR,已经进行了几次尝试。但是,尚未报道使用基于树格的解码器的非常大的词汇表CSR。我们报告了涉及超过一百万个词汇表(此处称为超百万个LVCSR)的大型词汇表CSR(LVCSR)中基于“ Julius”树格结构的解码器的性能评估和改进。实验表明,在日本报纸语音转录的数百万个LVCSR中,Julius的单词准确度约为91%,实时因子约为2。

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