English

Cross-modal Variational Auto-encoder for Content-based Micro-video Background Music Recommendation

Multimedia 2022-12-13 v2 Information Retrieval

Abstract

In this paper, we propose a cross-modal variational auto-encoder (CMVAE) for content-based micro-video background music recommendation. CMVAE is a hierarchical Bayesian generative model that matches relevant background music to a micro-video by projecting these two multimodal inputs into a shared low-dimensional latent space, where the alignment of two corresponding embeddings of a matched video-music pair is achieved by cross-generation. Moreover, the multimodal information is fused by the product-of-experts (PoE) principle, where the semantic information in visual and textual modalities of the micro-video are weighted according to their variance estimations such that the modality with a lower noise level is given more weights. Therefore, the micro-video latent variables contain less irrelevant information that results in a more robust model generalization. Furthermore, we establish a large-scale content-based micro-video background music recommendation dataset, TT-150k, composed of approximately 3,000 different background music clips associated to 150,000 micro-videos from different users. Extensive experiments on the established TT-150k dataset demonstrate the effectiveness of the proposed method. A qualitative assessment of CMVAE by visualizing some recommendation results is also included.

Keywords

Cite

@article{arxiv.2107.07268,
  title  = {Cross-modal Variational Auto-encoder for Content-based Micro-video Background Music Recommendation},
  author = {Jing Yi and Yaochen Zhu and Jiayi Xie and Zhenzhong Chen},
  journal= {arXiv preprint arXiv:2107.07268},
  year   = {2022}
}
R2 v1 2026-06-24T04:13:34.362Z