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Investigating multi-task learning for automatic speech recognition with code-switching between mandarin and english

机译:研究多任务学习以自动语音识别,并在普通话和英语之间进行代码切换

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This work investigates a Multi-task Learning (MTL-DNN) approach to enhance the performance of Mandarin-English code-switching conversational speech recognition (MECS-CSR). The approach aims at getting a better acoustic model for the primary task by jointly learning two auxiliary tasks together. To overcome the effect of co-articulation at code-switch points, under MTL-DNN, we propose to jointly train two types of Mandarin-English acoustic models according to the choice of acoustic units that describe the salient acoustic and phonetic information for Mandarin. To further make use of language information, we jointly train another acoustic model for language identification (LID) with the two acoustic models under the MTL-DNN. To evaluate the effectiveness of our developed MECS-CSR system, extensive experiments are carried out on a public dataset LDC2015S04. It is noted that our approach does not require other language resources. Compared with the first basic MECS-CSR system [1], Mixed Error Rate (MER) of our proposed approach is relatively reduced by 12.49%. The performance improvement benefits from multi-task learning where the common internal representation is obtained from the auxiliary tasks learning.
机译:这项工作研究了一种多任务学习(MTL-DNN)方法,以增强普通话-英语代码转换会话语音识别(MECS-CSR)的性能。该方法旨在通过共同学习两个辅助任务来为主要任务获得更好的声学模型。为了克服在代码转换点的共同发音的影响,在MTL-DNN下,我们建议根据描述普通话的重要声学和语音信息的声学单位的选择,共同训练两种类型的普通话-英语声学模型。为了进一步利用语言信息,我们在MTL-DNN下与两个声学模型共同训练了另一个用于语言识别的声学模型(LID)。为了评估我们开发的MECS-CSR系统的有效性,对公共数据集LDC2015S04进行了广泛的实验。注意,我们的方法不需要其他语言资源。与第一个基本的MECS-CSR系统相比[1],我们提出的方法的混合错误率(MER)相对降低了12.49%。从多任务学习中可以提高性能,在多任务学习中,可以从辅助任务学习中获得通用的内部表示形式。

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