Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

GVMGen: A General Video-to-Music Generation Model with Hierarchical Attentions

About

Composing music for video is essential yet challenging, leading to a growing interest in automating music generation for video applications. Existing approaches often struggle to achieve robust music-video correspondence and generative diversity, primarily due to inadequate feature alignment methods and insufficient datasets. In this study, we present General Video-to-Music Generation model (GVMGen), designed for generating high-related music to the video input. Our model employs hierarchical attentions to extract and align video features with music in both spatial and temporal dimensions, ensuring the preservation of pertinent features while minimizing redundancy. Remarkably, our method is versatile, capable of generating multi-style music from different video inputs, even in zero-shot scenarios. We also propose an evaluation model along with two novel objective metrics for assessing video-music alignment. Additionally, we have compiled a large-scale dataset comprising diverse types of video-music pairs. Experimental results demonstrate that GVMGen surpasses previous models in terms of music-video correspondence, generative diversity, and application universality.

Heda Zuo, Weitao You, Junxian Wu, Shihong Ren, Pei Chen, Mingxu Zhou, Yujia Lu, Lingyun Sun• 2025

Related benchmarks

TaskDatasetResultRank
Video-to-Music GenerationOES-Pub
FAD*6.25
7
Video-to-Music GenerationMovieGenBench Music
FAD3.96
7
Video-to-Music GenerationV2MBench
IB0.1952
7
Video-to-Music GenerationReelBench
IB0.0957
7
Video-to-Music GenerationLORIS
IB Score0.0771
7
Video-to-Music GenerationVideo-to-Music Generation Evaluation Dataset (test)
FAD2.362
6
Video-to-Music GenerationLong-form Videos Subjective Study
EDC1.65
5
Video-to-Music GenerationShort- and Mid-length Videos
EDC2.68
5
Showing 8 of 8 rows

Other info

Follow for update