English

MRSAudio: A Large-Scale Multimodal Recorded Spatial Audio Dataset with Refined Annotations

Sound 2025-10-20 v3

Abstract

Humans rely on multisensory integration to perceive spatial environments, where auditory cues enable sound source localization in three-dimensional space. Despite the critical role of spatial audio in immersive technologies such as VR/AR, most existing multimodal datasets provide only monaural audio, which limits the development of spatial audio generation and understanding. To address these challenges, we introduce MRSAudio, a large-scale multimodal spatial audio dataset designed to advance research in spatial audio understanding and generation. MRSAudio spans four distinct components: MRSLife, MRSSpeech, MRSMusic, and MRSSing, covering diverse real-world scenarios. The dataset includes synchronized binaural and ambisonic audio, exocentric and egocentric video, motion trajectories, and fine-grained annotations such as transcripts, phoneme boundaries, lyrics, scores, and prompts. To demonstrate the utility and versatility of MRSAudio, we establish five foundational tasks: audio spatialization, and spatial text to speech, spatial singing voice synthesis, spatial music generation and sound event localization and detection. Results show that MRSAudio enables high-quality spatial modeling and supports a broad range of spatial audio research. Demos and dataset access are available at https://mrsaudio.github.io.

Keywords

Cite

@article{arxiv.2510.10396,
  title  = {MRSAudio: A Large-Scale Multimodal Recorded Spatial Audio Dataset with Refined Annotations},
  author = {Wenxiang Guo and Changhao Pan and Zhiyuan Zhu and Xintong Hu and Yu Zhang and Li Tang and Rui Yang and Han Wang and Zongbao Zhang and Yuhan Wang and Yixuan Chen and Hankun Xu and Ke Xu and Pengfei Fan and Zhetao Chen and Yanhao Yu and Qiange Huang and Fei Wu and Zhou Zhao},
  journal= {arXiv preprint arXiv:2510.10396},
  year   = {2025}
}

Comments

24 pages

R2 v1 2026-07-01T06:31:50.747Z