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Main Authors: Dhouib, Mohamed, Buscaldi, Davide, Vanier, Sonia, Shabou, Aymen
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.17322
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author Dhouib, Mohamed
Buscaldi, Davide
Vanier, Sonia
Shabou, Aymen
author_facet Dhouib, Mohamed
Buscaldi, Davide
Vanier, Sonia
Shabou, Aymen
contents Detecting tampered text in document images is a challenging task due to data scarcity. To address this, previous work has attempted to generate tampered documents using rule-based methods. However, the resulting documents often suffer from limited variety and poor visual quality, typically leaving highly visible artifacts that are rarely observed in real-world manipulations. This undermines the model's ability to learn robust, generalizable features and results in poor performance on real-world data. Motivated by this discrepancy, we propose a novel method for generating high-quality tampered document images. We first train an auxiliary network to compare text crops, leveraging contrastive learning with a novel strategy for defining positive pairs and their corresponding negatives. We also train a second auxiliary network to evaluate whether a crop tightly encloses the intended characters, without cutting off parts of characters or including parts of adjacent ones. Using a carefully designed generation pipeline that leverages both networks, we introduce a framework capable of producing diverse, high-quality tampered document images. We assess the effectiveness of our data generation pipeline by training multiple models on datasets derived from the same source images, generated using our method and existing approaches, under identical training protocols. Evaluating these models on various open-source datasets shows that our pipeline yields consistent performance improvements across architectures and datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2602_17322
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Leveraging Contrastive Learning for a Similarity-Guided Tampered Document Data Generation Pipeline
Dhouib, Mohamed
Buscaldi, Davide
Vanier, Sonia
Shabou, Aymen
Computer Vision and Pattern Recognition
Detecting tampered text in document images is a challenging task due to data scarcity. To address this, previous work has attempted to generate tampered documents using rule-based methods. However, the resulting documents often suffer from limited variety and poor visual quality, typically leaving highly visible artifacts that are rarely observed in real-world manipulations. This undermines the model's ability to learn robust, generalizable features and results in poor performance on real-world data. Motivated by this discrepancy, we propose a novel method for generating high-quality tampered document images. We first train an auxiliary network to compare text crops, leveraging contrastive learning with a novel strategy for defining positive pairs and their corresponding negatives. We also train a second auxiliary network to evaluate whether a crop tightly encloses the intended characters, without cutting off parts of characters or including parts of adjacent ones. Using a carefully designed generation pipeline that leverages both networks, we introduce a framework capable of producing diverse, high-quality tampered document images. We assess the effectiveness of our data generation pipeline by training multiple models on datasets derived from the same source images, generated using our method and existing approaches, under identical training protocols. Evaluating these models on various open-source datasets shows that our pipeline yields consistent performance improvements across architectures and datasets.
title Leveraging Contrastive Learning for a Similarity-Guided Tampered Document Data Generation Pipeline
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2602.17322