印尼语自发语音识别的声学和语言模型适应

D. Lestari, Angela Irfani
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引用次数: 11

摘要

印尼语自动语音识别在识别自发语音时,性能明显下降。自发语在语音和语言规则上都具有与朗读语不同的特点。在自发演讲中,演讲的发音和表达会根据说话者的流利程度和话题而有所不同。言语的不流畅会破坏一个流畅的句子,而且更经常违反形式语言的规则。为了提高印尼语自动语音识别器对自发语音的识别能力,采用了几种模型增强方法,包括添加自发数据并利用这些数据对声学模型和语言模型进行再训练、基于最大似然线性回归和最大后验方法对声学模型进行自适应、使用语言模型线性插值对语言模型进行自适应。实验结果表明,所有方法都能有效地提高印尼语自动语音识别器对自发数据的识别能力。然而,所有的方法都降低了读语音识别的准确性。平均而言,结合阅读和自发数据对声学和语言模型进行再训练比进行模型适应更有效。结合读取数据和自发数据对语言模型和声学模型进行再训练,准确率绝对提高28.34%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic and language models adaptation for Indonesian spontaneous speech recognition
Performance of Indonesian Automatic Speech Recognition is decreased significantly when recognizing spontaneous speech. Spontaneous speech has particular characteristics differ from read speech both in acoustic and language rule. In spontaneous speech, the pronunciation and expression of the speech varies depending on the speaker fluency and the topic. Disfluencies in speech disrupt a fluent sentence and more often violates the rule of the formal language. To improve Indonesian automatic speech recognizer to recognize spontaneous speech, several model enhancement methods was conducted by adding spontaneous data and retrain both acoustic model and language model using those data, by adapting the acoustic model based on the maximum likelihood linear regression and maximum a posteriori approach, and by adapting the language model employing the language model linear interpolation. Experimental results show all methods are effective in increasing the capability of the Indonesian automatic speech recognizer to recognize spontaneous data. However, all methods decreased the accuracy of read speech recognition. On average, retraining both acoustic and language models using combination of read and spontaneous data is more effective than conducting model adaptation. The absolute improvement of 28.34% accuracy is achieved after retraining both language model and acoustic model using combination of read data and spontaneous data.
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