基于Inception网和Efficient网的深度假视频检测的比较分析

Geetha Rani E, Mounika E, Gopala Krisnan C, Tanuep Bellam, B. P., Kanagavalli Rengaraju
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引用次数: 0

摘要

人类最显著的特征就是人脸。我们可以把某人的脸和其他人的脸交换,看起来很逼真,因为许多人都有另一种基于深度造假技术的算法。深度造假视频/照片是人工智能技术的革命性分支,通过使用某人的脸来覆盖某人的脸。更慷慨的是,根据富有成效的照片,有许多不同的方法。不情愿地,智能手机的过度使用和使用人工智能操纵的数据进行多个互联网组织的速度越来越快,这是我们在20世纪可以看到的,全球危险是由这些产品构成的。深度造假是一种利用机器学习制作误导性视频的数字操纵技术。鉴定是最难从原件中找到的部分。在此之前,使用CNN网络进行深度假识别验证。随着深度造假的日益流行,识别真实视频的方法变得越来越重要。在这个项目中,我们将研究不同的方法,可以用来检测这样的图像和视频。这项研究表明,它们也可以使用卷积算法(称为Efficient Net和Inception Net)来完成。在本文中,我们比较了不同版本的卷积Inception Net和不同版本的卷积Efficient Net结合视觉变形器和不同的数据文件,以获得Deepfake检测的最佳结果。利用高效网络和初始网络对视频真伪进行了高度准确的识别。束)
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Comparative Analysis of Deepfake Video Detection Using Inception Net and Efficient Net
Human beings have the most distinctive feature that is human face. We can exchange somebody faces with anybody else's faces that appear realistic because many have another type of algo is based upon deepfake tech. Deepfake videos / photos is revolutionary subdual of AI tech by using someones human face can overwrite of someones face. More generously, with many different methods based on productive pictures. Unwillingly the overuse of smartphone and organizing by multiple internet web using AI manipulated data is reaching quicker in something which can we see in the 20th century, global danger is made up by these products Deepfakes are digital manipulation techniques that use machine learning to produce misleading videos. Identification is most difficult part to find from the original. Previously, CNN networks were used to perform identify the deep fake verification. Due to the increasing popularity of deep fakes identification of real one is more important find ways to detect manipulated videos that are presented as real ones. In this project, we will study different methods that can be used to detect such images as well as videos. This study shows that they can also be done using a convolutional algorithm known as Efficient Net and Inception Net. In this Paper, we compare various versions of Convolutional Inception Net with various versions of convolutional Efficient Net combined with Vision Transformers and different Data files to obtain best possible results in Deepfake detection. To get the highly accurate percentage to identify the video is fake or real by using efficient net and by inception net. tract)
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