FLAV: Rolling Flow matching for infinite Audio Video generation
Joint audio-video (AV) generation is still a significant challenge in generative AI, primarily due to three critical requirements: quality of the generated samples, seamless multimodal synchronization and temporal coherence, with audio tracks that match the visual data and vice versa, and limitless video duration. In this paper, we present -FLAV, a novel transformer-based architecture that addresses all the key challenges of AV generation. We explore three distinct cross modality interaction modules, with our lightweight temporal fusion module emerging as the most effective and computationally efficient approach for aligning audio and visual modalities. Our experimental results demonstrate that -FLAV outperforms existing state-of-the-art models in multimodal AV generation tasks. Our code and checkpoints are available atthis https URL.
View on arXiv@article{ergasti2025_2503.08307, title={ $^R$FLAV: Rolling Flow matching for infinite Audio Video generation }, author={ Alex Ergasti and Giuseppe Gabriele Tarollo and Filippo Botti and Tomaso Fontanini and Claudio Ferrari and Massimo Bertozzi and Andrea Prati }, journal={arXiv preprint arXiv:2503.08307}, year={ 2025 } }