CVMMSDASNov 21, 2022

Video Background Music Generation: Dataset, Method and Evaluation

arXiv:2211.11248v251 citationsh-index: 18Has Code
Originality Highly original
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This work addresses the time-consuming task of manual music selection for video editing, providing a foundational dataset and model for the video background music generation domain.

The paper tackles the problem of automatically generating background music for videos by introducing SymMV, the first video-music dataset with rich musical annotations, and V-MusProd, a benchmark framework that outperforms state-of-the-art methods in music quality and video correspondence.

Music is essential when editing videos, but selecting music manually is difficult and time-consuming. Thus, we seek to automatically generate background music tracks given video input. This is a challenging task since it requires music-video datasets, efficient architectures for video-to-music generation, and reasonable metrics, none of which currently exist. To close this gap, we introduce a complete recipe including dataset, benchmark model, and evaluation metric for video background music generation. We present SymMV, a video and symbolic music dataset with various musical annotations. To the best of our knowledge, it is the first video-music dataset with rich musical annotations. We also propose a benchmark video background music generation framework named V-MusProd, which utilizes music priors of chords, melody, and accompaniment along with video-music relations of semantic, color, and motion features. To address the lack of objective metrics for video-music correspondence, we design a retrieval-based metric VMCP built upon a powerful video-music representation learning model. Experiments show that with our dataset, V-MusProd outperforms the state-of-the-art method in both music quality and correspondence with videos. We believe our dataset, benchmark model, and evaluation metric will boost the development of video background music generation. Our dataset and code are available at https://github.com/zhuole1025/SymMV.

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