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Main Authors: Huang, Junhua, Huang, Chao, Xu, Chenliang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.08871
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author Huang, Junhua
Huang, Chao
Xu, Chenliang
author_facet Huang, Junhua
Huang, Chao
Xu, Chenliang
contents Balancing dialogue, music, and sound effects with accompanying video is crucial for immersive storytelling, yet current audio mixing workflows remain largely manual and labor-intensive. While recent advancements have introduced the visually guided acoustic highlighting task, which implicitly rebalances audio sources using multimodal guidance, it remains unclear which visual aspects are most effective as conditioning signals.We address this gap through a systematic study of whether deep video understanding improves audio remixing. Using textual descriptions as a proxy for visual analysis, we prompt large vision-language models to extract six types of visual-semantic aspects, including object and character appearance, emotion, camera focus, tone, scene background, and inferred sound-related cues. Through extensive experiments, camera focus, tone, and scene background consistently yield the largest improvements in perceptual mix quality over state-of-the-art baselines. Our findings (i) identify which visual-semantic cues most strongly support coherent and visually aligned audio remixing, and (ii) outline a practical path toward automating cinema-grade sound design using lightweight guidance derived from large vision-language models.
format Preprint
id arxiv_https___arxiv_org_abs_2601_08871
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Semantic visually-guided acoustic highlighting with large vision-language models
Huang, Junhua
Huang, Chao
Xu, Chenliang
Sound
Artificial Intelligence
Audio and Speech Processing
Balancing dialogue, music, and sound effects with accompanying video is crucial for immersive storytelling, yet current audio mixing workflows remain largely manual and labor-intensive. While recent advancements have introduced the visually guided acoustic highlighting task, which implicitly rebalances audio sources using multimodal guidance, it remains unclear which visual aspects are most effective as conditioning signals.We address this gap through a systematic study of whether deep video understanding improves audio remixing. Using textual descriptions as a proxy for visual analysis, we prompt large vision-language models to extract six types of visual-semantic aspects, including object and character appearance, emotion, camera focus, tone, scene background, and inferred sound-related cues. Through extensive experiments, camera focus, tone, and scene background consistently yield the largest improvements in perceptual mix quality over state-of-the-art baselines. Our findings (i) identify which visual-semantic cues most strongly support coherent and visually aligned audio remixing, and (ii) outline a practical path toward automating cinema-grade sound design using lightweight guidance derived from large vision-language models.
title Semantic visually-guided acoustic highlighting with large vision-language models
topic Sound
Artificial Intelligence
Audio and Speech Processing
url https://arxiv.org/abs/2601.08871