多线索图像篡改定位

Lorenzo Gaborini, Paolo Bestagini, S. Milani, M. Tagliasacchi, S. Tubaro
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引用次数: 43

摘要

如今,任何人都可以篡改图像。这决定了我们迫切需要能够揭示这种变化的工具。不幸的是,虽然伪造可以通过许多不同的方式进行操作,但法医工具通常专注于一种特定的伪造。因此,篡改检测和定位的有效策略需要合并许多不同取证工具的输出。在本文中,我们提出了一种基于三个独立检测器融合的图像篡改定位算法:i)一个基于PRNU,当我们用同一台相机拍摄至少几张照片时工作;ii)一个基于PatchMatch;Iii)一个利用图像系统发育分析,以防我们有一组接近重复的图像来分析。该方法针对IEEE信息取证和安全技术委员会发布的第一次图像取证挑战数据集进行了验证。结果表明,该算法能够在论文提交时间内以最高分战胜挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Clue Image Tampering Localization
Image tampering is nowadays at everyone's reach. This has determined an urgent need of tools capable of revealing such alterations. Unfortunately, while forgeries can be operated in many different ways, forensic tools usually focus on one specific kind of forgeries. Therefore, an effective strategy for tampering detection and localization requires to merge the output of many different forensic tools. In this paper, we propose an algorithm for image tampering localization, based on the fusion of three separate detectors: i) one based on PRNU, working when we have at least a few of pictures shot with the same camera; ii) one based on PatchMatch; iii) one exploiting image phylogeny analysis, in case we have a set of near-duplicate images to analyze. The method is validated against the dataset released by the IEEE Information Forensics and Security Technical Committee for the First Image Forensics Challenge. Results show that the proposed algorithm can beat the challenge with the highest score achieved at paper submission time.
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