Audio-visual feature integration based on piecewise linear transformation for noise robust automatic speech recognition

Yosuke Kashiwagi, Masayuki Suzuki, N. Minematsu, K. Hirose
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引用次数: 7

Abstract

Multimodal speech recognition is a promising approach to realize noise robust automatic speech recognition (ASR), and is currently gathering the attention of many researchers. Multimodal ASR utilizes not only audio features, which are sensitive to background noises, but also non-audio features such as lip shapes to achieve noise robustness. Although various methods have been proposed to integrate audio-visual features, there are still continuing discussions on how the vest integration of audio and visual features is realized. Weights of audio and visual features should be decided according to the noise features and levels: in general, larger weights to visual features when the noise level is low and vice versa, but how it can be controlled? In this paper, we propose a method based on piecewise linear transformation in feature integration. In contrast to other feature integration methods, our proposed method can appropriately change the weight depending on a state of an observed noisy feature, which has information both on uttered phonemes and environmental noise. Experiments on noisy speech recognition are conducted following to CENSREC-1-AV, and word error reduction rate around 24% is realized in average as compared to a decision fusion method.
基于分段线性变换的视听特征集成噪声鲁棒自动语音识别
多模态语音识别是实现噪声鲁棒自动语音识别(ASR)的一种很有前途的方法,目前受到许多研究者的关注。多模态ASR不仅利用对背景噪声敏感的音频特征,还利用唇形等非音频特征来实现噪声鲁棒性。虽然已经提出了各种方法来整合音视频特征,但如何实现音视频特征的整合仍在继续讨论。音频和视觉特征的权重应根据噪音特征和水平来决定:一般来说,当噪音水平较低时,视觉特征的权重较大,反之亦然,但如何控制呢?本文提出了一种基于分段线性变换的特征积分方法。与其他特征集成方法相比,我们提出的方法可以根据观察到的噪声特征的状态适当地改变权重,这些特征既包含发出的音素信息,也包含环境噪声信息。根据CENSREC-1-AV进行了噪声语音识别实验,与决策融合方法相比,平均实现了24%左右的词错误率。
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