Attention-based Wav2Text with feature transfer learning

Andros Tjandra, S. Sakti, Satoshi Nakamura
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引用次数: 19

Abstract

Conventional automatic speech recognition (ASR) typically performs multi-level pattern recognition tasks that map the acoustic speech waveform into a hierarchy of speech units. But, it is widely known that information loss in the earlier stage can propagate through the later stages. After the resurgence of deep learning, interest has emerged in the possibility of developing a purely end-to-end ASR system from the raw waveform to the transcription without any predefined alignments and hand-engineered models. However, the successful attempts in end-to-end architecture still used spectral-based features, while the successful attempts in using raw waveform were still based on the hybrid deep neural network — Hidden Markov model (DNN-HMM) framework. In this paper, we construct the first end-to-end attention-based encoder-decoder model to process directly from raw speech waveform to the text transcription. We called the model as Attention-based Wav2Text. To assist the training process of the end-to-end model, we propose to utilize a feature transfer learning. Experimental results also reveal that the proposed Attention-based Wav2Text model directly with raw waveform could achieve a better result in comparison with the attentional encoder-decoder model trained on standard front-end filterbank features.
基于注意力的Wav2Text与特征迁移学习
传统的自动语音识别(ASR)通常执行多级模式识别任务,将声学语音波形映射到语音单元的层次结构中。但是,众所周知,早期的信息丢失可以通过后期传播。在深度学习的复兴之后,人们对开发从原始波形到转录的纯端到端ASR系统的可能性产生了兴趣,而无需任何预定义的比对和手工设计的模型。然而,端到端架构的成功尝试仍然使用基于频谱的特征,而原始波形的成功尝试仍然基于混合深度神经网络-隐马尔可夫模型(DNN-HMM)框架。在本文中,我们构建了第一个端到端基于注意力的编码器-解码器模型,将原始语音波形直接处理为文本转录。我们把这个模型称为基于注意力的Wav2Text。为了辅助端到端模型的训练过程,我们建议利用特征迁移学习。实验结果还表明,与基于标准前端滤波器组特征训练的注意编码器-解码器模型相比,直接使用原始波形的基于注意的Wav2Text模型可以取得更好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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