Deepfake Video Detection by Combining Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN)

Yunes Al-Dhabi, Shuang Zhang
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引用次数: 10

Abstract

Nowadays, people are facing an emerging problem called deepfake videos. These videos were created using deep learning technology. Some are created just for fun, while others are trying to manipulate your opinions, cause threats to your privacy, reputation, and so on. Sometimes, deepfake videos created using the latest algorithms can be hard to distinguish with the naked eye. That's why we need better algorithms to detect deepfake. The system we are going to present is based on a combination of CNN and RNN, as research shows that using CNN and RNN combined achieve better results. We are going to use a pre-trained CNN model called Resnext50. Using this, we save the time of training the model from scratch. The proposed system uses Resnext pretrained model for Feature Extraction and these extracted features are used to train the Long short-term memory (LSTM). Using CNN and RNN combined, we capture the inter frames as well as intra frames features which will be used to detect if the video is real or fake. We evaluated our method using a large collection of deepfake videos gathered from a variety of distribution sources. We demonstrate how our system may obtain competitive results while utilizing a simplistic architecture.
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结合卷积神经网络(CNN)和循环神经网络(RNN)的深度假视频检测
如今,人们正面临着一个新出现的问题,叫做深度假视频。这些视频是用深度学习技术制作的。有些只是为了好玩,而另一些则试图操纵你的观点,对你的隐私、声誉等造成威胁。有时候,使用最新算法制作的深度假视频很难用肉眼区分。这就是为什么我们需要更好的算法来检测深度造假。我们将要介绍的系统是基于CNN和RNN的结合,因为研究表明CNN和RNN结合使用可以获得更好的效果。我们将使用一个预训练的CNN模型,叫做Resnext50。使用它,我们节省了从头开始训练模型的时间。该系统使用Resnext预训练模型进行特征提取,提取的特征用于训练长短期记忆。结合使用CNN和RNN,我们捕获帧间和帧内特征,这些特征将用于检测视频是真还是假。我们使用从各种分发源收集的大量深度假视频来评估我们的方法。我们演示了我们的系统如何在使用简单架构的同时获得有竞争力的结果。
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