Deep Learning as a field has been successfully used to solve a plethora of complex problems, the likes of which we could not have imagined a few decades back. But as many benefits as it brings, there are still ways in which it can be used to bring harm to our society. Deep fakes have been proven to be one such problem, and now more than ever, when any individual can create a fake image or video simply using an application on the smartphone, there need to be some countermeasures, with which we can detect if the image or video is a fake or real and dispose of the problem threatening the trustworthiness of online information. Although the Deep fakes created by neural networks, may seem to be as real as a real image or video, it still leaves behind spatial and temporal traces or signatures after moderation, these signatures while being invisible to a human eye can be detected with the help of a neural network trained to specialize in Deep fake detection. In this paper, we analyze several such states of the art neural networks (MesoNet, ResNet-50, VGG-19, and Xception Net) and compare them against each other, to find an optimal solution for various scenarios like real-time deep fake detection to be deployed in online social media platforms where the classification should be made as fast as possible or for a small news agency where the classification need not be in real-time but requires utmost accuracy.
翻译:深层次的假冒已被证明是一个这样的问题,而现在比以往更需要,当任何个人能够仅仅利用智能手机上的应用来制作假图像或视频时,我们需要用一些对策来检测图像或视频是否是假的或真实的,并处理威胁在线信息可信度的问题。尽管神经网络创造的深层假象似乎真实真实的图像或视频,但是它仍然可以用来伤害我们的社会。它仍然会留下空间和时间的痕迹或签名,在节制之后,这些信号在人类眼中是看不见的,但可以通过一个受过训练的神经网络来专门进行深层假探测。在这份文件中,我们分析一些这样的神经网络状态(MesoNet、ResNet-50、VGG-19和Xcepion Net),并把它们与每一个不同的问题进行对比,以便找到一个最精确的社交分类,而不是在最精确的网络媒体中找到一个最精确的解决方案,比如快速的社交分类平台,在其中找到一个最精确的、最精确的、最精确的、最精确的、最精确的、最精确的、最精确的社交的媒体分类平台,以便快速地进行实时的、最精确的、最精确的分类。