Reed: An Approach Towards Quickly Bootstrapping Multilingual Acoustic Models

Bipasha Sen, Aditya Agarwal, Mirishkar Sai Ganesh, A. Vuppala
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引用次数: 2

Abstract

Multilingual automatic speech recognition (ASR) system is a single entity capable of transcribing multiple languages sharing a common phone space. Performance of such a system is highly dependent on the compatibility of the languages. State of the art speech recognition systems are built using sequential architectures based on recurrent neural networks (RNN) limiting the computational parallelization in training. This poses a significant challenge in terms of time taken to bootstrap and validate the compatibility of multiple languages for building a robust multilingual system. Complex architectural choices based on self-attention networks are made to improve the parallelization thereby reducing the training time. In this work, we propose Reed, a simple system based on 1D convolutions which uses very short context to improve the training time. To improve the performance of our system, we use raw time-domain speech signals directly as input. This enables the convolutional layers to learn feature representations rather than relying on handcrafted features such as MFCC. We report improvement on training and inference times by atleast a factor of 4× and 7.4× respectively with comparable WERs against standard RNN based baseline systems on SpeechOcean’s multilingual low resource dataset.
Reed:快速启动多语言声学模型的方法
多语言自动语音识别(ASR)系统是一个能够转录共享一个公共电话空间的多种语言的单一实体。这种系统的性能高度依赖于语言的兼容性。目前的语音识别系统都是基于循环神经网络(RNN)的序列结构,限制了训练中的并行化计算。就引导和验证多种语言的兼容性以构建健壮的多语言系统所花费的时间而言,这提出了一个重大挑战。基于自关注网络的复杂体系结构选择提高了并行性,从而减少了训练时间。在这项工作中,我们提出了Reed,一个基于一维卷积的简单系统,它使用非常短的上下文来提高训练时间。为了提高系统的性能,我们直接使用原始的时域语音信号作为输入。这使得卷积层能够学习特征表示,而不是依赖于手工制作的特征,如MFCC。我们报告了在SpeechOcean的多语言低资源数据集上,与基于标准RNN的基线系统相比,在训练和推理时间上分别提高了至少4倍和7.4倍。
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