DP-DWA: Dual-Path Dynamic Weight Attention Network With Streaming Dfsmn-San For Automatic Speech Recognition

Dongpeng Ma, Yiwen Wang, Liqiang He, Mingjie Jin, Dan Su, Dong Yu
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引用次数: 1

Abstract

In multi-channel far-field automatic speech recognition (ASR) scenarios, distortion is introduced when the speech signal is processed by the front end, which damages the recognition performance for the ASR tasks. In this paper, we propose a dual-path network for the far-field acoustic model, which uses voice processing (VP) signal and acoustic echo cancellation (AEC) signal as input. Specifically, we design a dynamic weight attention (DWA) module for combining two signals. Besides, we streamline our best deep feed-forward sequential memory network with self-attention (DFSMN-SAN) acoustic model for real-time requirements. Joint-training strategy is adopted to optimize the proposed approach. We find that with dual-path network, we can achieve a 54.5% relative improvement in character error rate (CER) on a 10,000-hour online conference task. In addition, our proposed method is not affected by the arrangement of different microphone arrays. We achieve a 23.56% relative improvement on a vehicle task, which has an array with two microphones.
DP-DWA:基于流式Dfsmn-San的自动语音识别双路径动态权重注意网络
在多通道远场自动语音识别(ASR)场景中,语音信号在前端处理过程中会产生失真,影响ASR任务的识别性能。本文提出了一种以语音处理(VP)信号和声回波抵消(AEC)信号为输入的远场声学模型双路径网络。具体来说,我们设计了一个动态权重注意(DWA)模块来组合两个信号。此外,我们还简化了基于自关注(DFSMN-SAN)声学模型的最佳深度前馈顺序记忆网络,以满足实时性要求。采用联合训练策略对该方法进行优化。我们发现,使用双路径网络,在1万小时的在线会议任务中,我们可以实现54.5%的字符错误率(CER)的相对改进。此外,我们提出的方法不受不同麦克风阵列排列的影响。我们在车辆任务上实现了23.56%的相对改进,该任务具有两个麦克风阵列。
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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