English

METER: Multi-modal Evidence-based Thinking and Explainable Reasoning -- Algorithm and Benchmark

Machine Learning 2025-07-23 v1 Artificial Intelligence

Abstract

With the rapid advancement of generative AI, synthetic content across images, videos, and audio has become increasingly realistic, amplifying the risk of misinformation. Existing detection approaches predominantly focus on binary classification while lacking detailed and interpretable explanations of forgeries, which limits their applicability in safety-critical scenarios. Moreover, current methods often treat each modality separately, without a unified benchmark for cross-modal forgery detection and interpretation. To address these challenges, we introduce METER, a unified, multi-modal benchmark for interpretable forgery detection spanning images, videos, audio, and audio-visual content. Our dataset comprises four tracks, each requiring not only real-vs-fake classification but also evidence-chain-based explanations, including spatio-temporal localization, textual rationales, and forgery type tracing. Compared to prior benchmarks, METER offers broader modality coverage and richer interpretability metrics such as spatial/temporal IoU, multi-class tracing, and evidence consistency. We further propose a human-aligned, three-stage Chain-of-Thought (CoT) training strategy combining SFT, DPO, and a novel GRPO stage that integrates a human-aligned evaluator with CoT reasoning. We hope METER will serve as a standardized foundation for advancing generalizable and interpretable forgery detection in the era of generative media.

Keywords

Cite

@article{arxiv.2507.16206,
  title  = {METER: Multi-modal Evidence-based Thinking and Explainable Reasoning -- Algorithm and Benchmark},
  author = {Xu Yang and Qi Zhang and Shuming Jiang and Yaowen Xu and Zhaofan Zou and Hao Sun and Xuelong Li},
  journal= {arXiv preprint arXiv:2507.16206},
  year   = {2025}
}

Comments

9 pages,3 figures ICCV format

R2 v1 2026-07-01T04:12:40.161Z