Deepfake Creation and Detection using Ensemble Deep Learning Models

S. Rao, N. Shelke, Aditya Goel, Harshita Bansal
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引用次数: 1

Abstract

The use of Artificial Intelligence to create falsified videos using Deep Neural Networks is posing a serious problem in distinguishing the real from the counterfeit. These counterfeit videos are known as “Deepfakes”. Due to their realistic appearance and their subsequent ability to influence perceptions and mass sentiment, deepfakes must be monitored. Malicious deepfakes must be detected, and their circulation is immediately controlled. Many deepfake detection technologies have been developed that use particular features to classify fabricated media. This paper proposes the framework of deepfake detection using deep neural network models. The hybrid combination of deep learning models predicts deepfakes with better accuracy. The proposed model is tested and evaluated on the DFDC and CelebDF dataset that classifies more deepfake videos.
使用集成深度学习模型的深度伪造创建和检测
利用人工智能(ai)利用深度神经网络(Deep Neural Networks)制作伪造视频,给真假区分带来了严重问题。这些假冒视频被称为“深度造假”。由于其逼真的外观及其随后影响感知和大众情绪的能力,必须对深度伪造进行监控。恶意深度造假必须被发现,并立即控制其传播。许多深度假检测技术已经开发出来,使用特定的特征来分类制造的媒体。本文提出了一种基于深度神经网络模型的深度伪造检测框架。深度学习模型的混合组合预测深度伪造的准确性更高。在DFDC和CelebDF数据集上对所提出的模型进行了测试和评估,该数据集对深度假视频进行了分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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