Multichannel ASR with Knowledge Distillation and Generalized Cross Correlation Feature

Wenjie Li, Yu Zhang, Pengyuan Zhang, Fengpei Ge
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引用次数: 2

Abstract

Multi-channel signal processing techniques have played an important role in the far-field automatic speech recognition (ASR) as the separate front-end enhancement part. However, they often meet the mismatch problem. In this paper, we proposed a novel architecture of acoustic model, in which the multi-channel speech without preprocessing was utilized directly. Besides the strategy of knowledge distillation and the generalized cross correlation (GCC) adaptation were employed. We use knowledge distillation to transfer knowledge from a well-trained close-talking model to distant-talking scenarios in every frame of the multichannel distant speech. Moreover, the GCC between microphones, which contains the spatial information, is supplied as an auxiliary input to the neural network. We observe good compensation of those two techniques. Evaluated with the AMI and ICSI meeting corpora, the proposed methods achieve relative WER improvement of 7.7% and 7.5% over the model trained directly on the concatenated multi-channel speech.
基于知识蒸馏和广义互相关特征的多通道ASR
多通道信号处理技术作为独立的前端增强部分,在远场自动语音识别(ASR)中发挥着重要作用。然而,它们经常遇到不匹配的问题。在本文中,我们提出了一种新的声学模型结构,该结构直接利用了未经预处理的多通道语音。此外,还采用了知识蒸馏和广义互相关(GCC)自适应策略。我们使用知识蒸馏将知识从训练良好的近距离对话模型转移到多通道远程语音的每一帧的远程对话场景中。此外,麦克风之间包含空间信息的GCC作为辅助输入提供给神经网络。我们观察到这两种技术的良好补偿。使用AMI和ICSI会议语料库进行评估,与直接在多通道语音上训练的模型相比,所提出的方法的相对加权加权提高了7.7%和7.5%。
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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