English

Soundscape Captioning using Sound Affective Quality Network and Large Language Model

Audio and Speech Processing 2025-08-26 v3 Sound Signal Processing

Abstract

We live in a rich and varied acoustic world, which is experienced by individuals or communities as a soundscape. Computational auditory scene analysis, disentangling acoustic scenes by detecting and classifying events, focuses on objective attributes of sounds, such as their category and temporal characteristics, ignoring their effects on people, such as the emotions they evoke within a context. To fill this gap, we propose the affective soundscape captioning (ASSC) task, which enables automated soundscape analysis, thus avoiding labour-intensive subjective ratings and surveys in conventional methods. With soundscape captioning, context-aware descriptions are generated for soundscape by capturing the acoustic scenes (ASs), audio events (AEs) information, and the corresponding human affective qualities (AQs). To this end, we propose an automatic soundscape captioner (SoundSCaper) system composed of an acoustic model, i.e. SoundAQnet, and a large language model (LLM). SoundAQnet simultaneously models multi-scale information about ASs, AEs, and perceived AQs, while the LLM describes the soundscape with captions by parsing the information captured with SoundAQnet. SoundSCaper is assessed by two juries of 32 people. In expert evaluation, the average score of SoundSCaper-generated captions is slightly lower than that of two soundscape experts on the evaluation set D1 and the external mixed dataset D2, but not statistically significant. In layperson evaluation, SoundSCaper outperforms soundscape experts in several metrics. In addition to human evaluation, compared to other automated audio captioning systems with and without LLM, SoundSCaper performs better on the ASSC task in several NLP-based metrics. Overall, SoundSCaper performs well in human subjective evaluation and various objective captioning metrics, and the generated captions are comparable to those annotated by soundscape experts.

Keywords

Cite

@article{arxiv.2406.05914,
  title  = {Soundscape Captioning using Sound Affective Quality Network and Large Language Model},
  author = {Yuanbo Hou and Qiaoqiao Ren and Andrew Mitchell and Wenwu Wang and Jian Kang and Tony Belpaeme and Dick Botteldooren},
  journal= {arXiv preprint arXiv:2406.05914},
  year   = {2025}
}

Comments

IEEE Transactions on Multimedia, Code: https://github.com/Yuanbo2020/SoundSCaper

R2 v1 2026-06-28T16:58:58.826Z