生成对抗网络伪造手写签名。

Maciej Marcinowski-Prażmowski
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引用次数: 0

摘要

随着生成式人工智能(主要是生成对抗网络(GAN))的进一步发展,深度伪造的质量和可访问性正在提高。然而,为检查笔迹而设计的法医方法经常应用于其数字副本,尽管可能对gan制造的伪造案件不敏感(除非联合使用数字法医方法)。从一个新颖的角度来解决这个问题,我们创建了一个翻译GAN,其任务是从有限的例子中生成虚假的手写签名,旨在确定传统的签名检查方法是否能有效地对抗此类伪造。我们发现,传统的笔迹检查方法足以识别鉴别特征,这些特征可能导致gan制造的伪造品被拒绝,然而,这些特征主要源于生成的签名的视觉质量较差,这可以在未来得到改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generative-adversarial network for falsification of handwritten signatures.

With further development of generative AI, primarily generative-adversarial networks (GAN), deepfakes are gaining in quality and accessibility. While, forensic methods designed for examination of handwriting are often applied to its digital copies, despite being possibly insensitive to cases of GAN-made forgeries (unless methods of digital forensics are co-employed). Approaching this problem from a novel perspective, we have created a translational GAN tasked with generating false handwritten signatures from limited examples, aiming to ascertain whether traditional methods of signature examination will be effective against such forgeries. We have found that traditional methods of handwriting examination are sufficient for identification of discriminative features that could result in rejection of GAN-made forgeries, however, those stemmed mostly from the lesser visual quality of the generated signatures, which could be improved in the future.

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