Attention-based Audio-Visual Fusion for Robust Automatic Speech Recognition

George Sterpu, Christian Saam, N. Harte
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引用次数: 51

Abstract

Automatic speech recognition can potentially benefit from the lip motion patterns, complementing acoustic speech to improve the overall recognition performance, particularly in noise. In this paper we propose an audio-visual fusion strategy that goes beyond simple feature concatenation and learns to automatically align the two modalities, leading to enhanced representations which increase the recognition accuracy in both clean and noisy conditions. We test our strategy on the TCD-TIMIT and LRS2 datasets, designed for large vocabulary continuous speech recognition, applying three types of noise at different power ratios. We also exploit state of the art Sequence-to-Sequence architectures, showing that our method can be easily integrated. Results show relative improvements from 7% up to 30% on TCD-TIMIT over the acoustic modality alone, depending on the acoustic noise level. We anticipate that the fusion strategy can easily generalise to many other multimodal tasks which involve correlated modalities.
基于注意力的视听融合鲁棒自动语音识别
自动语音识别可以潜在地受益于嘴唇运动模式,补充声学语音以提高整体识别性能,特别是在噪声中。在本文中,我们提出了一种视听融合策略,该策略超越了简单的特征拼接,并学习自动对齐两种模式,从而增强表征,从而提高了在清洁和嘈杂条件下的识别精度。我们在专为大词汇量连续语音识别设计的TCD-TIMIT和LRS2数据集上测试了我们的策略,应用了三种不同功率比的噪声。我们还利用了最先进的序列到序列体系结构,表明我们的方法可以很容易地集成。结果显示,与声学模态相比,TCD-TIMIT的相对改善幅度从7%到30%不等,具体取决于声学噪声水平。我们预计,融合策略可以很容易地推广到许多其他涉及相关模态的多模态任务。
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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