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arxiv:2505.14336

Scaling and Enhancing LLM-based AVSR: A Sparse Mixture of Projectors Approach

Published on May 20
· Submitted by hisoka94 on May 22
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Abstract

Llama-SMoP, an efficient multimodal LLM incorporating Sparse Mixture of Projectors, enhances AVSR performance without increasing inference costs through modality-specific routers and experts.

AI-generated summary

Audio-Visual Speech Recognition (AVSR) enhances robustness in noisy environments by integrating visual cues. While recent advances integrate Large Language Models (LLMs) into AVSR, their high computational cost hinders deployment in resource-constrained settings. To address this, we propose Llama-SMoP, an efficient Multimodal LLM that employs a Sparse Mixture of Projectors (SMoP) module to scale model capacity without increasing inference costs. By incorporating sparsely-gated mixture-of-experts (MoE) projectors, Llama-SMoP enables the use of smaller LLMs while maintaining strong performance. We explore three SMoP configurations and show that Llama-SMoP DEDR (Disjoint-Experts, Disjoint-Routers), which uses modality-specific routers and experts, achieves superior performance on ASR, VSR, and AVSR tasks. Ablation studies confirm its effectiveness in expert activation, scalability, and noise robustness.

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Paper submitter

We propose Llama-SMoP (Sparse Mixture of Projectors), an MLLM for audio-visual speech recognition (AVSR) that applies Mixture of Experts (MoE) into the linear projectors to process the audio-visual tokens. Our module is simple, effective, and model-agnostic, improving AVSR capabilities over three Llama LLMs of different sizes. Llama-SMoP is also robust to noise and performs well on ASR and VSR tasks.

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