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Feedback-Driven Refinement of Mandarin Speech Recognition Result based on Lattice Modification and Rescoring

机译:基于格修饰和记录的反馈驱动的汉语语音识别结果细化

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摘要

In real world applications of speech recognition, recognition errors are inevitable, and manual correction is necessary. This paper presents an approach for the refinement of Mandarin speech recognition result by exploiting user feedback. An interface incorporating character-based candidate lists and feedback-driven updating of the candidate lists is introduced. For dynamic updating of candidate lists, a novel method based on lattice modification and rescoring is proposed. By adding words with similar pronunciations to the candidates next to the corrected character into the lattice and then performing rescoring on the modified lattice, the proposed method can improve the accuracy of the candidate lists even if the correct characters are not in the original lattice, with much lower computational cost than that of the speech re-recognition methods. Experimental results show that the proposed method can reduce 24.03% of user inputs and improve average candidate rank by 25.31%.
机译:在现实世界中的语音识别应用中,不可避免会出现识别错误,并且必须进行手动校正。本文提出了一种利用用户反馈来细化普通话语音识别结果的方法。引入了一个界面,该界面结合了基于字符的候选列表和候选列表的反馈驱动更新。针对候选列表的动态更新,提出了一种基于晶格修正和计分的新方法。通过向校正后的字符旁边的候选词中添加具有相似发音的单词,然后对修改后的网格进行记录,即使正确的字符不在原始晶格中,所提出的方法也可以提高候选列表的准确性。比语音重新识别方法的计算成本低得多。实验结果表明,该方法可以减少24.03%的用户输入,平均候选排名提高25.31%。

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