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Main Authors: Selvakumar, Ramaneswaran, Jayakumar, Kaousheik, Sakshi, S, Ghosh, Sreyan, Gao, Ruohan, Manocha, Dinesh
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.02605
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author Selvakumar, Ramaneswaran
Jayakumar, Kaousheik
Sakshi, S
Ghosh, Sreyan
Gao, Ruohan
Manocha, Dinesh
author_facet Selvakumar, Ramaneswaran
Jayakumar, Kaousheik
Sakshi, S
Ghosh, Sreyan
Gao, Ruohan
Manocha, Dinesh
contents Audio-Visual Large Language Models (AVLLMs) are emerging as unified interfaces to multimodal perception. We present the first mechanistic interpretability study of AVLLMs, analyzing how audio and visual features evolve and fuse through different layers of an AVLLM to produce the final text outputs. We find that although AVLLMs encode rich audio semantics at intermediate layers, these capabilities largely fail to surface in the final text generation when audio conflicts with vision. Probing analyses show that useful latent audio information is present, but deeper fusion layers disproportionately privilege visual representations that tend to suppress audio cues. We further trace this imbalance to training: the AVLLM's audio behavior strongly matches its vision-language base model, indicating limited additional alignment to audio supervision. Our findings reveal a fundamental modality bias in AVLLMs and provide new mechanistic insights into how multimodal LLMs integrate audio and vision.
format Preprint
id arxiv_https___arxiv_org_abs_2604_02605
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Do Audio-Visual Large Language Models Really See and Hear?
Selvakumar, Ramaneswaran
Jayakumar, Kaousheik
Sakshi, S
Ghosh, Sreyan
Gao, Ruohan
Manocha, Dinesh
Artificial Intelligence
Sound
Audio-Visual Large Language Models (AVLLMs) are emerging as unified interfaces to multimodal perception. We present the first mechanistic interpretability study of AVLLMs, analyzing how audio and visual features evolve and fuse through different layers of an AVLLM to produce the final text outputs. We find that although AVLLMs encode rich audio semantics at intermediate layers, these capabilities largely fail to surface in the final text generation when audio conflicts with vision. Probing analyses show that useful latent audio information is present, but deeper fusion layers disproportionately privilege visual representations that tend to suppress audio cues. We further trace this imbalance to training: the AVLLM's audio behavior strongly matches its vision-language base model, indicating limited additional alignment to audio supervision. Our findings reveal a fundamental modality bias in AVLLMs and provide new mechanistic insights into how multimodal LLMs integrate audio and vision.
title Do Audio-Visual Large Language Models Really See and Hear?
topic Artificial Intelligence
Sound
url https://arxiv.org/abs/2604.02605