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Improving the Syllable-Synchronous Network Search Algorithm for Word Decoding in Continuous Chinese Speech Recognition

机译:连续中文语音识别中音节同步网络搜索算法的改进

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摘要

The previously proposed syllable-synchronous network search (SSNS) algorithm plays a very important role in the word decoding of the continuous Chinese speech recognition and achieves satisfying performance. Several related key factors that may affect the overall word decoding effect are carefully studied in this paper, including the perfecting of the vocabulary, the big-discount Turing re-estimating of the N-Gram probabilities, and the managing of the searching path buffers. Based on these discussions, corresponding approaches to improving the SSNS algorithm are proposed. Compared with the previous version of SSNS algorithm, the new version decreases the Chinese character error rate (CCER) in the word decoding by 42.l/100 across a database consisting of a large number of testing sentences (syllable strings).
机译:先前提出的音节同步网络搜索算法在连续中文语音识别的单词解码中起着非常重要的作用,并取得了令人满意的性能。本文仔细研究了可能影响整体单词解码效果的几个相关关键因素,包括词汇的完善,N-Gram概率的大折扣图灵重新估计以及搜索路径缓冲区的管理。基于这些讨论,提出了相应的方法来改进SSNS算法。与先前版本的SSNS算法相比,新版本在包含大量测试句子(音节字符串)的数据库中将单词解码中的汉字错误率(CCER)降低了42.l / 100。

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