基于文档内在内容的伪造检测

Amr Gamal Hamed Ahmed, F. Shafait
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引用次数: 28

摘要

如今,文档伪造检测变得越来越重要,因为伪造技术甚至对未经训练的用户都是可用的。因此,不包含任何外部安全特性(例如发票)的文档变得更容易伪造。我们之前提出了一种基于伪造过程中引入的扭曲来检测被操纵文档的方法。本文探讨了几种方法,以提高准确性和时间,以检测伪造基于文档扭曲。所提出的方法背后的主要思想是自动识别文档的哪些部分属于模板(因此在来自同一来源的不同文档之间保持静态),然后仅检测这些部分中的扭曲。与我们以前的工作相比,伪造检测的准确性提高了29%。此外,我们还提出了原始方法的近似值,该方法的运行时间减少了几个数量级,而其精度仅略有降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forgery Detection Based on Intrinsic Document Contents
Nowadays, Document forgery detection is becoming increasingly important as forgery techniques are becoming available even to untrained users. Hence, documents that do not contain any extrinsic security features (e.g. invoices) have become easier to forge. We previously presented a method to detect manipulated documents based on distortions introduced during the forgery creation process. In this paper, several approaches are explored to improve accuracy and time taken to detect forgeries based on document distortions. The main idea behind the presented approaches is to automatically identify which parts of a document belong to the template (and hence would remain static across different documents originating from the same source) and then detect distortions in those parts only. An improvement up to 29% in accuracy of forgery detection is observed compared to our previous work. Furthermore, we also present an approximation of the original method that results in a reduction in run time of the method by several orders of magnitude, while having only a marginal reduction in its accuracy.
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