SDCVMMASOct 16, 2024

MuVi: Video-to-Music Generation with Semantic Alignment and Rhythmic Synchronization

arXiv:2410.12957v122 citationsh-index: 16
Originality Highly original
AI Analysis

This addresses the challenge of creating cohesive audio-visual content for applications like video production and entertainment, representing a novel method for a known bottleneck.

The paper tackles the problem of generating music that aligns with visual content in videos, achieving superior performance in audio quality and temporal synchronization.

Generating music that aligns with the visual content of a video has been a challenging task, as it requires a deep understanding of visual semantics and involves generating music whose melody, rhythm, and dynamics harmonize with the visual narratives. This paper presents MuVi, a novel framework that effectively addresses these challenges to enhance the cohesion and immersive experience of audio-visual content. MuVi analyzes video content through a specially designed visual adaptor to extract contextually and temporally relevant features. These features are used to generate music that not only matches the video's mood and theme but also its rhythm and pacing. We also introduce a contrastive music-visual pre-training scheme to ensure synchronization, based on the periodicity nature of music phrases. In addition, we demonstrate that our flow-matching-based music generator has in-context learning ability, allowing us to control the style and genre of the generated music. Experimental results show that MuVi demonstrates superior performance in both audio quality and temporal synchronization. The generated music video samples are available at https://muvi-v2m.github.io.

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