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A Comparative Analysis of Domain Adaptation Techniques for Recognition of Accented Speech

机译:口音识别领域自适应技术的比较分析

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Addressing the domain mismatch problem has been a long term interest within cognitive infocommunication. In particular, several techniques to compensate for dialectal variations of the same base language in Automatic Speech Recognition (ASR) have been proposed. Conservative retraining, transfer learning, multi-task training, matrix factorization, i-vector based techniques as well as adversarial and teacher-student training, have been proposed for the specific purpose of ASR deep neural acoustic models domain adaptation. Comparing these techniques is often complicated as different experiments are carried out on diverse datasets and within various frameworks. It is also worthwhile analyzing possible combination of such techniques within complex systems. The objective of this work is to systematically compare and analyse a number of domain adaptation techniques for ASR using the same framework, the open-source Kaldi toolkit, in order to allow for a fair comparison on adapting US English acoustic models for the Indian accent. Our results indicate that, when properly hyper-parametrized and carefully regularized, the easiest approaches, requiring less complexity and reduced computational power, can perform equally well as the more complex ones.
机译:解决域不匹配问题一直是认知信息通信领域的长期兴趣。特别地,已经提出了几种在自动语音识别(ASR)中补偿相同基本语言的方言变化的技术。针对ASR深层神经声学模型领域适应性的特定目的,已经提出了保守的再训练,迁移学习,多任务训练,矩阵分解,基于i-vector的技术以及对抗性和师生训练。由于对不同的数据集和不同的框架进行了不同的实验,因此比较这些技术通常很复杂。分析复杂系统中这种技术的可能组合也是值得的。这项工作的目的是使用相同的框架(开源的Kaldi工具包)系统地比较和分析ASR的多种领域适应技术,以便公平地比较针对印第安口音改编美国英语声学模型。我们的结果表明,如果正确地进行了超参数化并进行了仔细的正则化,则最简单的方法(其复杂度较低且计算能力较低)可以与较复杂的方法一样好地执行。

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