论文标题

DeepFake视频取证基于转移学习

Deepfake Video Forensics based on Transfer Learning

论文作者

U, Rahul, M, Ragul, K, Raja Vignesh, K, Tejeswinee

论文摘要

深度学习已用于解决各个领域中的复杂问题。随着它的发展,它还创建了对我们的隐私,安全甚至对我们民主国家的主要威胁。最近正在开发的应用程序是“ Deepfake”。 Deepfake模型可以创建虚假的图像和视频,使人类无法将它们与真正的图像区分开。因此,在当今世界上,需要自动检测和分析数字视觉媒体的计数器应用。本文详细详细介绍了图像分类模型,以了解每个DeepFake视频帧的功能。在为每个视频框架中的神经网络中预处理的瓶颈喂入了不同的视频条纹片段之后,已经指定的层包含所有图像的凝结数据,并在深板视频中揭示了人工操作。在检查DeepFake视频时,该技术获得了超过87%的精度。该技术已在面部取证数据集上进行了测试,并在检测中获得了良好的准确性。

Deeplearning has been used to solve complex problems in various domains. As it advances, it also creates applications which become a major threat to our privacy, security and even to our Democracy. Such an application which is being developed recently is the "Deepfake". Deepfake models can create fake images and videos that humans cannot differentiate them from the genuine ones. Therefore, the counter application to automatically detect and analyze the digital visual media is necessary in today world. This paper details retraining the image classification models to apprehend the features from each deepfake video frames. After feeding different sets of deepfake clips of video fringes through a pretrained layer of bottleneck in the neural network is made for every video frame, already stated layer contains condense data for all images and exposes artificial manipulations in Deepfake videos. When checking Deepfake videos, this technique received more than 87 per cent accuracy. This technique has been tested on the Face Forensics dataset and obtained good accuracy in detection.

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