Anti-Counterfeit Handwritten Signature via DCGAN with SGPD Network

Hendry, D. Manongga, Yessica Nataliani, Theopilus Hermanus Wellem
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Abstract

In recent years, the growth of machine learning makes the computer can learn many things by using artificial intelligence. One method that is feared nowadays is the computer's capability to imitate something. This capability is called deep-fake. Deep-fake is the capability of the computer to imitate human characteristics such as voice, images, and video through artificial intelligence. Deep-fake is used to combine put the consisted image and video to another source of images and video using machine learning which is known as a generative adversarial network. With these capabilities, deep-fake is already used to make a counterfeit video, signature, voice signature, and much fake news. This paper is about to combine the capabilities of deep learning and the Generative Adversarial Network (GAN) to deal with detecting the fraud in the handwritten signature. We will focus on several types of ways to sign with the characters. The system will recommend if the hand signature of the user is fake or genuine. This is under the capabilities of GAN to synthesize the signature, it can make the computer automatically generate hand signature by using a machine. Many researchers called this capability is deep-fake. This research aims to learn the hand signature to do fraud detection. We propose an architecture to build the anti-counterfeiting hand signature which is utilized deep learning with a self-growing probabilistic method.
基于SGPD网络的DCGAN防伪手写签名
近年来,机器学习的发展使得计算机可以通过人工智能学习很多东西。现在人们担心的一种方法是计算机模仿某些东西的能力。这种能力被称为deep-fake。Deep-fake是指计算机通过人工智能模仿人类的声音、图像和视频等特征的能力。Deep-fake使用机器学习将合成的图像和视频结合到另一个图像和视频源,这被称为生成对抗网络。有了这些功能,深度伪造已经被用来制作伪造视频、签名、语音签名和许多假新闻。本文将深度学习和生成对抗网络(GAN)相结合来处理手写签名中的欺诈检测。我们将重点介绍几种使用汉字签名的方法。系统会提示用户的手签名是假的还是真的。这是在GAN合成签名的能力下,利用机器使计算机自动生成手签名。许多研究人员称这种能力是深度伪造的。本研究旨在学习手签名来进行欺诈检测。提出了一种利用深度学习和自增长概率方法构建防伪手签名的体系结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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