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Autori principali: Wang, Xinyu, Jiang, Haotian, Huang, Haolin, Fang, Yu, Xu, Mengjie, Wang, Qian
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2409.00481
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author Wang, Xinyu
Jiang, Haotian
Huang, Haolin
Fang, Yu
Xu, Mengjie
Wang, Qian
author_facet Wang, Xinyu
Jiang, Haotian
Huang, Haolin
Fang, Yu
Xu, Mengjie
Wang, Qian
contents Speech recognition is the technology that enables machines to interpret and process human speech, converting spoken language into text or commands. This technology is essential for applications such as virtual assistants, transcription services, and communication tools. The Audio-Visual Speech Recognition (AVSR) model enhances traditional speech recognition, particularly in noisy environments, by incorporating visual modalities like lip movements and facial expressions. While traditional AVSR models trained on large-scale datasets with numerous parameters can achieve remarkable accuracy, often surpassing human performance, they also come with high training costs and deployment challenges. To address these issues, we introduce an efficient AVSR model that reduces the number of parameters through the integration of a Dual Conformer Interaction Module (DCIM). In addition, we propose a pre-training method that further optimizes model performance by selectively updating parameters, leading to significant improvements in efficiency. Unlike conventional models that require the system to independently learn the hierarchical relationship between audio and visual modalities, our approach incorporates this distinction directly into the model architecture. This design enhances both efficiency and performance, resulting in a more practical and effective solution for AVSR tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2409_00481
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publishDate 2024
record_format arxiv
spellingShingle DCIM-AVSR : Efficient Audio-Visual Speech Recognition via Dual Conformer Interaction Module
Wang, Xinyu
Jiang, Haotian
Huang, Haolin
Fang, Yu
Xu, Mengjie
Wang, Qian
Audio and Speech Processing
Sound
Speech recognition is the technology that enables machines to interpret and process human speech, converting spoken language into text or commands. This technology is essential for applications such as virtual assistants, transcription services, and communication tools. The Audio-Visual Speech Recognition (AVSR) model enhances traditional speech recognition, particularly in noisy environments, by incorporating visual modalities like lip movements and facial expressions. While traditional AVSR models trained on large-scale datasets with numerous parameters can achieve remarkable accuracy, often surpassing human performance, they also come with high training costs and deployment challenges. To address these issues, we introduce an efficient AVSR model that reduces the number of parameters through the integration of a Dual Conformer Interaction Module (DCIM). In addition, we propose a pre-training method that further optimizes model performance by selectively updating parameters, leading to significant improvements in efficiency. Unlike conventional models that require the system to independently learn the hierarchical relationship between audio and visual modalities, our approach incorporates this distinction directly into the model architecture. This design enhances both efficiency and performance, resulting in a more practical and effective solution for AVSR tasks.
title DCIM-AVSR : Efficient Audio-Visual Speech Recognition via Dual Conformer Interaction Module
topic Audio and Speech Processing
Sound
url https://arxiv.org/abs/2409.00481