English

LogicLens: Visual-Logical Co-Reasoning for Text-Centric Forgery Analysis

Artificial Intelligence 2025-12-29 v1

Abstract

Sophisticated text-centric forgeries, fueled by rapid AIGC advancements, pose a significant threat to societal security and information authenticity. Current methods for text-centric forgery analysis are often limited to coarse-grained visual analysis and lack the capacity for sophisticated reasoning. Moreover, they typically treat detection, grounding, and explanation as discrete sub-tasks, overlooking their intrinsic relationships for holistic performance enhancement. To address these challenges, we introduce LogicLens, a unified framework for Visual-Textual Co-reasoning that reformulates these objectives into a joint task. The deep reasoning of LogicLens is powered by our novel Cross-Cues-aware Chain of Thought (CCT) mechanism, which iteratively cross-validates visual cues against textual logic. To ensure robust alignment across all tasks, we further propose a weighted multi-task reward function for GRPO-based optimization. Complementing this framework, we first designed the PR2^2 (Perceiver, Reasoner, Reviewer) pipeline, a hierarchical and iterative multi-agent system that generates high-quality, cognitively-aligned annotations. Then, we constructed RealText, a diverse dataset comprising 5,397 images with fine-grained annotations, including textual explanations, pixel-level segmentation, and authenticity labels for model training. Extensive experiments demonstrate the superiority of LogicLens across multiple benchmarks. In a zero-shot evaluation on T-IC13, it surpasses the specialized framework by 41.4% and GPT-4o by 23.4% in macro-average F1 score. Moreover, on the challenging dense-text T-SROIE dataset, it establishes a significant lead over other MLLM-based methods in mF1, CSS, and the macro-average F1. Our dataset, model, and code will be made publicly available.

Keywords

Cite

@article{arxiv.2512.21482,
  title  = {LogicLens: Visual-Logical Co-Reasoning for Text-Centric Forgery Analysis},
  author = {Fanwei Zeng and Changtao Miao and Jing Huang and Zhiya Tan and Shutao Gong and Xiaoming Yu and Yang Wang and Huazhe Tan and Weibin Yao and Jianshu Li},
  journal= {arXiv preprint arXiv:2512.21482},
  year   = {2025}
}

Comments

11 pages, 5 figures, 3 tables

R2 v1 2026-07-01T08:40:35.526Z