Heilongjiang Provincial Key Laboratory of Complex Intelligent System and Integration, School of Automation, Harbin University of Science and Technology, Harbin 150080, China.
Comput Intell Neurosci. 2022 Apr 15;2022:3441549. doi: 10.1155/2022/3441549. eCollection 2022.
As technology advances and society evolves, deep learning is becoming easier to operate. Many unscrupulous people are using deep learning technology to create fake pictures and fake videos that seriously endanger the stability of the country and society. Examples include faking politicians to make inappropriate statements, using face-swapping technology to spread false information, and creating fake videos to obtain money. In view of this social problem, based on the original fake face detection system, this paper proposes using a new network of EfficientNet-V2 to distinguish the authenticity of pictures and videos. Moreover, our method was used to deal with two current mainstream large-scale fake face datasets, and EfficientNet-V2 highlighted the superior performance of the new network by comparing the existing detection network with the actual training and testing results. Finally, based on improving the accuracy of the detection system in distinguishing real and fake faces, the actual pictures and videos are detected, and an excellent visualization effect is achieved.
随着技术的进步和社会的发展,深度学习变得越来越容易操作。许多不法分子利用深度学习技术制作虚假图片和虚假视频,严重危害国家和社会的稳定。例如,伪造政客发表不当言论、使用换脸技术传播虚假信息、制作虚假视频获取钱财等。针对这一社会问题,本文在原始的假脸检测系统基础上,提出使用新的 EfficientNet-V2 网络来区分图片和视频的真伪。此外,我们的方法还用于处理两个当前主流的大型假脸数据集,通过将现有检测网络与实际训练和测试结果进行比较,EfficientNet-V2 突出了新网络的优越性能。最后,基于提高检测系统在区分真脸和假脸方面的准确性,对实际的图片和视频进行了检测,并取得了优异的可视化效果。