Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

MIR-GAN: Refining Frame-Level Modality-Invariant Representations with Adversarial Network for Audio-Visual Speech Recognition

About

Audio-visual speech recognition (AVSR) attracts a surge of research interest recently by leveraging multimodal signals to understand human speech. Mainstream approaches addressing this task have developed sophisticated architectures and techniques for multi-modality fusion and representation learning. However, the natural heterogeneity of different modalities causes distribution gap between their representations, making it challenging to fuse them. In this paper, we aim to learn the shared representations across modalities to bridge their gap. Different from existing similar methods on other multimodal tasks like sentiment analysis, we focus on the temporal contextual dependencies considering the sequence-to-sequence task setting of AVSR. In particular, we propose an adversarial network to refine frame-level modality-invariant representations (MIR-GAN), which captures the commonality across modalities to ease the subsequent multimodal fusion process. Extensive experiments on public benchmarks LRS3 and LRS2 show that our approach outperforms the state-of-the-arts.

Yuchen Hu, Chen Chen, Ruizhe Li, Heqing Zou, Eng Siong Chng• 2023

Related benchmarks

TaskDatasetResultRank
Audio-Visual Speech RecognitionLRS3 clean (test)
WER1.2
70
Audio-Visual Speech RecognitionLRS2 (clean)
WER2.2
12
Automatic Visual Speech RecognitionLRS2 clean (test)
WER2.2
12
Audio-Visual Speech RecognitionLRS3 noisy
Average Error Rate5.6
8
Audio-Visual Speech RecognitionLRS3 noisy synthesized using MUSAN noise (test)
WER5.6
7
Audio-Visual Speech RecognitionLRS2 noisy (MUSAN)
WER7
6
Automatic Visual Speech RecognitionLRS2 noisy (test)
WER7
6
Showing 7 of 7 rows

Other info

Code

Follow for update