TextSleuth: Towards Explainable Tampered Text Detection
Chenfan Qu, Jian Liu, Haoxing Chen, Baihan Yu, Jingjing Liu, Weiqiang, Wang, Lianwen Jin

TL;DR
TextSleuth introduces an explainable tampered text detection method using large multimodal models, a new comprehensive dataset, and a two-stage analysis approach to improve interpretability and accuracy in information security.
Contribution
The paper presents a novel explainable tampered text detection framework with a large-scale dataset and techniques to enhance interpretability and cross-domain performance.
Findings
Improved detection accuracy on ETTD and public datasets.
Enhanced interpretability through natural language explanations.
Better generalization across different domains.
Abstract
Recently, tampered text detection has attracted increasing attention due to its essential role in information security. Although existing methods can detect the tampered text region, the interpretation of such detection remains unclear, making the prediction unreliable. To address this problem, we propose to explain the basis of tampered text detection with natural language via large multimodal models. To fill the data gap for this task, we propose a large-scale, comprehensive dataset, ETTD, which contains both pixel-level annotations for tampered text region and natural language annotations describing the anomaly of the tampered text. Multiple methods are employed to improve the quality of the proposed data. For example, elaborate queries are introduced to generate high-quality anomaly descriptions with GPT4o. A fused mask prompt is proposed to reduce confusion when querying GPT4o to…
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Taxonomy
TopicsTopic Modeling · Natural Language Processing Techniques · Advanced Text Analysis Techniques
MethodsSoftmax · Attention Is All You Need
