基于判别加权语言模型的语言识别

Shizhen Wang, Jia Liu, Runsheng Liu
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摘要

为了更好地区分相似语言,本文提出了判别加权语言模型。第一阶段通过并行电话识别器和语言建模(PPRLM)系统,对两个最佳候选者进行假设,然后使用判别语言模型进行处理。实验结果表明,与传统的一遍语言识别(LID)系统相比,该方法在不增加计算成本的前提下,大大提高了识别性能。在CallFriend语料库的评估集上进行测试,最终系统在30个12向近集任务上的错误率为14.90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Language identification using discriminative weighted language models
In this paper, discriminative weighted language models are proposed to better distinguish between similar languages. Through parallel phone recognizers followed by language modeling (PPRLM) system in the first stage, two best candidates are hypothesized and then processed using discriminative language models. Experimental results show that, compared with the traditional one-pass language identification (LID) systems, the proposed two-pass method can greatly improve the performance without considerably increasing the computational costs. Tested on the evaluation set of the CallFriend corpus, the final system achieved an error rate of 14.90% on the 30s 12-way close-set task.
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