Challenge: Existing efforts to improve robustness of audio-visual speech recognition with visual information focus on audio modality . current approaches introduce noise adaptation techniques to improve reliability of AVSR task .
Approach: They propose a visual-invariant modality to strengthen robustness of audio-visual speech recognition (AVSR) it can adapt to any testing noises without dependence on noisy training data, a.k.a., unsupervised noise adaptation.
Outcome: The proposed method outperforms existing state-of-the-arts on visual speech recognition task under various noisy and clean conditions.

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Visual-Aware Speech Recognition for Noisy Scenarios (2025.emnlp-main)

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Challenge: Existing audio-only models that use visual cues for transcription struggle in noisy environments.
Approach: They propose a method that correlates visual cues with noise sources to improve transcription by filtering speech from noise and predicting noise labels in video inputs.
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AV-TranSpeech: Audio-Visual Robust Speech-to-Speech Translation (2023.acl-long)

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Challenge: Existing models for speech-to-speech translation suffer from distinct degradation in noisy environments and fail to translate visual speech.
Approach: They propose a text-based audio-visual speech-to-speech translation model that integrates visual information with audio-only data to improve system robustness.
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XLAVS-R: Cross-Lingual Audio-Visual Speech Representation Learning for Noise-Robust Speech Perception (2024.acl-long)

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Challenge: Speech recognition and translation systems perform poorly on noisy inputs, which are frequent in realistic environments.
Approach: They propose a cross-lingual audio-visual speech representation model for noise-robust speech recognition and translation in over 100 languages.
Outcome: The proposed model outperforms the previous state-of-the-art by 18.5% WER and 4.7 BLEU on downstream audio-visual speech recognition and translation tasks.
MIR-GAN: Refining Frame-Level Modality-Invariant Representations with Adversarial Network for Audio-Visual Speech Recognition (2023.acl-long)

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Challenge: Audio-visual speech recognition (AVSR) leverages multimodal signals to understand human speech.
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OpenSR: Open-Modality Speech Recognition via Maintaining Multi-Modality Alignment (2023.acl-long)

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Challenge: Speech Recognition often gets stuck in the lack of new domain utterances when training a model of new-domain speech.
Approach: They propose a training system Open-modality Speech Recognition that enables zero-shot modality transfer . they use multi-modal alignment in phoneme space to maintain multi-modality alignment .
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MMS-LLaMA: Efficient LLM-based Audio-Visual Speech Recognition with Minimal Multimodal Speech Tokens (2025.findings-acl)

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Challenge: Recent Large Language Model (LLM) based AVSR systems incur high computational costs due to high temporal resolution of audio-visual speech.
Approach: They propose an efficient multimodal speech LLM framework that minimizes token length while preserving essential linguistic content.
Outcome: The proposed approach reduces token usage by 86% while using only 3.5 tokens per second.
AudioVSR: Enhancing Video Speech Recognition with Audio Data (2024.emnlp-main)

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Challenge: Recent work has shown poor performance with non-Indo-European languages . previous work primarily utilizes video information to build VSR models .
Approach: They propose a generative model for data inflation that integrates synthetic data with authentic visual data to enhance the VSR model.
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Leveraging Unimodal Self-Supervised Learning for Multimodal Audio-Visual Speech Recognition (2022.acl-long)

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Challenge: Existing methods for audio-visual speech recognition use extra data to increase performance . a recent study shows that the use of unimodal self-supervised learning improves performance on multimodal tasks.
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Seeing is Believing: Emotion-Aware Audio-Visual Language Modeling for Expressive Speech Generation (2025.findings-emnlp)

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Challenge: AVLM integrates full-face visual cues into a pre-trained expressive speech model.
Approach: They propose an Audio-Visual Language Model (AVLM) for expressive speech generation by integrating full-face visual cues into a pre-trained expressive speech model.
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Two Heads Are Better Than One: Audio-Visual Speech Error Correction with Dual Hypotheses (2026.findings-acl)

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Challenge: Recent advances have introduced GER frameworks that utilize LLMs to refine ASR outputs.
Approach: They propose a framework that allows a large language model to compose independent N-best hypotheses from separate automatic speech recognition (ASR) and visual speech recognition models.
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