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Main Authors: Malard, Hugo, Lan, Gael Le, Wong, Daniel, Alon, David Lou, Wu, Yi-Chiao, Parekh, Sanjeel
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.03762
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author Malard, Hugo
Lan, Gael Le
Wong, Daniel
Alon, David Lou
Wu, Yi-Chiao
Parekh, Sanjeel
author_facet Malard, Hugo
Lan, Gael Le
Wong, Daniel
Alon, David Lou
Wu, Yi-Chiao
Parekh, Sanjeel
contents Visually-guided acoustic highlighting seeks to rebalance audio in alignment with the accompanying video, creating a coherent audio-visual experience. While visual saliency and enhancement have been widely studied, acoustic highlighting remains underexplored, often leading to misalignment between visual and auditory focus. Existing approaches use discriminative models, which struggle with the inherent ambiguity in audio remixing, where no natural one-to-one mapping exists between poorly-balanced and well-balanced audio mixes. To address this limitation, we reframe this task as a generative problem and introduce a Conditional Flow Matching (CFM) framework. A key challenge in iterative flow-based generation is that early prediction errors -- in selecting the correct source to enhance -- compound over steps and push trajectories off-manifold. To address this, we introduce a rollout loss that penalizes drift at the final step, encouraging self-correcting trajectories and stabilizing long-range flow integration. We further propose a conditioning module that fuses audio and visual cues before vector field regression, enabling explicit cross-modal source selection. Extensive quantitative and qualitative evaluations show that our method consistently surpasses the previous state-of-the-art discriminative approach, establishing that visually-guided audio remixing is best addressed through generative modeling.
format Preprint
id arxiv_https___arxiv_org_abs_2602_03762
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Conditional Flow Matching for Visually-Guided Acoustic Highlighting
Malard, Hugo
Lan, Gael Le
Wong, Daniel
Alon, David Lou
Wu, Yi-Chiao
Parekh, Sanjeel
Audio and Speech Processing
Machine Learning
Visually-guided acoustic highlighting seeks to rebalance audio in alignment with the accompanying video, creating a coherent audio-visual experience. While visual saliency and enhancement have been widely studied, acoustic highlighting remains underexplored, often leading to misalignment between visual and auditory focus. Existing approaches use discriminative models, which struggle with the inherent ambiguity in audio remixing, where no natural one-to-one mapping exists between poorly-balanced and well-balanced audio mixes. To address this limitation, we reframe this task as a generative problem and introduce a Conditional Flow Matching (CFM) framework. A key challenge in iterative flow-based generation is that early prediction errors -- in selecting the correct source to enhance -- compound over steps and push trajectories off-manifold. To address this, we introduce a rollout loss that penalizes drift at the final step, encouraging self-correcting trajectories and stabilizing long-range flow integration. We further propose a conditioning module that fuses audio and visual cues before vector field regression, enabling explicit cross-modal source selection. Extensive quantitative and qualitative evaluations show that our method consistently surpasses the previous state-of-the-art discriminative approach, establishing that visually-guided audio remixing is best addressed through generative modeling.
title Conditional Flow Matching for Visually-Guided Acoustic Highlighting
topic Audio and Speech Processing
Machine Learning
url https://arxiv.org/abs/2602.03762