English

BRACE: A Benchmark for Robust Audio Caption Quality Evaluation

Sound 2025-12-12 v1 Computation and Language

Abstract

Automatic audio captioning is essential for audio understanding, enabling applications such as accessibility and content indexing. However, evaluating the quality of audio captions remains a major challenge, especially in reference-free settings where high-quality ground-truth captions are unavailable. While CLAPScore is currently the most widely used reference-free Audio Caption Evaluation Metric(ACEM), its robustness under diverse conditions has not been systematically validated. To address this gap, we introduce BRACE, a new benchmark designed to evaluate audio caption alignment quality in a reference-free setting. BRACE is primarily designed for assessing ACEMs, and can also be extended to measure the modality alignment abilities of Large Audio Language Model(LALM). BRACE consists of two sub-benchmarks: BRACE-Main for fine-grained caption comparison and BRACE-Hallucination for detecting subtle hallucinated content. We construct these datasets through high-quality filtering, LLM-based corruption, and human annotation. Given the widespread adoption of CLAPScore as a reference-free ACEM and the increasing application of LALMs in audio-language tasks, we evaluate both approaches using the BRACE benchmark, testing CLAPScore across various CLAP model variants and assessing multiple LALMs. Notably, even the best-performing CLAP-based ACEM achieves only a 70.01 F1-score on the BRACE-Main benchmark, while the best LALM reaches just 63.19. By revealing the limitations of CLAP models and LALMs, our BRACE benchmark offers valuable insights into the direction of future research.

Keywords

Cite

@article{arxiv.2512.10403,
  title  = {BRACE: A Benchmark for Robust Audio Caption Quality Evaluation},
  author = {Tianyu Guo and Hongyu Chen and Hao Liang and Meiyi Qiang and Bohan Zeng and Linzhuang Sun and Bin Cui and Wentao Zhang},
  journal= {arXiv preprint arXiv:2512.10403},
  year   = {2025}
}
R2 v1 2026-07-01T08:20:09.516Z