使用Inception-ResnetV2进行深度伪造检测

A. Verma, Dipesh Gupta, M. K. Srivastava
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引用次数: 0

摘要

深度学习帮助我们解决了许多复杂的问题。计算机视觉是它的一个子类。由于能够从非结构化数据中发现模式,深度学习具有巨大的潜力。大型科技公司非常热衷于生产具有类似人脑决策能力的计算机。有了这些甜蜜的一面,就有了苦涩的一面。Deepfake就是这样一个例子。它创建一个面具,其中包含一个特定的人的属性,可以应用到其他一些人。通过这种方式,目标被描绘成做了他从未做过的事情。随着特定领域容量的增加,即生成对抗网络(GAN);现在我们可以制作高质量的深度伪造。如今的深度造假很容易欺骗人类的眼睛。其后果可能是毁灭性的和不可预见的。制造混乱和隐私威胁是人们质疑深度造假的一些主要原因。受害者的大小已经开始包括普通公众。我们能做的就是控制它的蔓延。这项工作考虑到了深度造假所带来的问题,并提出了一种检测视频造假的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deepfake Detection using Inception-ResnetV2
Deep learning has benefited us in resolving many complex problems. Computer vision is a subcategory of it. With the ability to find patterns from unstructured data, Deep learning has immense potential. Big techs are very keen on producing a computer with human brain-like decision-making capabilities. With all these sweeter sides comes the bitter side of it. Deepfake is one such occurrence. It creates a mask which contain properties of a particular person and can be applied to some other person. In this way the target is depicted doing deeds which he never did. With the increased capacity of a specific field i.e. Generative Adversarial Network (GAN); now we can create high-quality deepfakes. Deepfakes nowadays can easily deceive human eyes. The consequences of this can be devastating and unforeseeable. Creating chaos, privacy threats are some of the major reasons why people are questioning deepfakes. Victims’ size has started including common public. What could be done is to keep a check over its spreading. This work has taken into consideration the problems that emerged by deepfakes and proposed a method to detect forgery among videos.
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