Video Echoed in Music: Semantic, Temporal, and Rhythmic Alignment for Video-to-Music Generation

Authors

  • Xinyi Tong Central Conservatory of Music‌ Beijing Institute for General Artificial Intelligence Alibaba Group
  • Yiran Zhu Alibaba Group
  • Jishang Chen Central Conservatory of Music‌ Beijing Institute for General Artificial Intelligence Alibaba Group
  • Chunru Zhan Alibaba Group
  • Tianle Wang Central Conservatory of Music‌ Beijing Institute for General Artificial Intelligence
  • Sirui Zhang Central Conservatory of Music‌ Beijing Institute for General Artificial Intelligence
  • Nian Liu Beijing Institute for General Artificial Intelligence
  • Tiezheng Ge Alibaba Group
  • Duo XU Beijing Institute for General Artificial Intelligence
  • Xin Jin Beijing Institute for General Artificial Intelligence
  • Feng Yu Central Conservatory of Music‌
  • Song-Chun Zhu Beijing Institute for General Artificial Intelligence Peking University

DOI:

https://doi.org/10.1609/aaai.v40i31.39799

Abstract

Video-to-Music generation seeks to generate musically appropriate background music that enhances audiovisual immersion for videos. However, current approaches suffer from two critical limitations: 1) incomplete representation of video details, leading to weak alignment, and 2) inadequate temporal and rhythmic correspondence, particularly in achieving precise beat synchronization. To address the challenges, we propose Video Echoed in Music (VeM), a latent music diffusion that generates high-quality soundtracks with semantic, temporal, and rhythmic alignment for input videos. To capture video details comprehensively, VeM employs a hierarchical video parsing that acts as a music conductor, orchestrating multi-level information across modalities. Modality-specific encoders, coupled with a storyboard-guided cross-attention mechanism (SG-CAtt), integrate semantic cues while maintaining temporal coherence through position and duration encoding. For rhythmic precision, the frame-level transition-beat aligner and adapter (TB-As) dynamically synchronize visual scene transitions with music beats. We further contribute a novel video-music paired dataset sourced from e-commerce advertisements and video-sharing platforms, which imposes stricter transition-beat synchronization requirements. Meanwhile, we introduce novel metrics tailored to the task. Experimental results demonstrate superiority, particularly in semantic relevance and rhythmic precision.

Published

2026-03-14

How to Cite

Tong, X., Zhu, Y., Chen, J., Zhan, C., Wang, T., Zhang, S., … Zhu, S.-C. (2026). Video Echoed in Music: Semantic, Temporal, and Rhythmic Alignment for Video-to-Music Generation. Proceedings of the AAAI Conference on Artificial Intelligence, 40(31), 25983–25991. https://doi.org/10.1609/aaai.v40i31.39799

Issue

Section

AAAI Technical Track on Machine Learning VIII