An Efficient Deepfake Video Detection Approach with Combination of EfficientNet and Xception Models Using Deep Learning

Serhat AtaŞ, Ismail Ilhan, Mehmet Karaköse
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引用次数: 1

Abstract

Artificial intelligence is used in many areas and is constantly being developed. In recent years, videos made with deep fakes, which are often heard, have also developed. The use of videos made with deep fakes as blackmail in people's lives, manipulating the videos of important people to cause anxiety on people and etc. due to the fact that it poses a threat in many areas presents a big problem today. Efforts are being made to prevent this threat by detecting deep fake videos. Deep fake detection is still not fully resolved. For this reason, prominent technology companies provide support to researchers in this field and develop deep fraud detection by suggesting methods and organizing contests on most platforms such as Kaggle. In this article, a detection method is proposed to minimize the current concern of deep forgery. In the proposed method, the Xception model with high performance and speed and the EfficientNetB4 model with high accuracy were used. The proposed method aims to achieve better results and improvements in detecting fake videos.
基于高效网络和异常模型的深度假视频检测方法
人工智能应用于许多领域,并不断得到发展。近年来,经常听到的深度造假视频也有所发展。在人们的生活中,利用深度造假制作的视频进行敲诈,操纵重要人物的视频引起人们的焦虑等,因为它在许多领域构成了威胁,这是当今的一个大问题。人们正在努力通过检测深度虚假视频来防止这种威胁。深度造假检测仍未完全解决。因此,一些著名的科技公司为这一领域的研究人员提供支持,并通过在Kaggle等大多数平台上提出方法和组织竞赛来开发深度欺诈检测。在本文中,提出了一种检测方法,以减少目前对深度伪造的关注。该方法采用高性能、高速度的Xception模型和高精度的EfficientNetB4模型。该方法的目的是在检测虚假视频方面取得更好的效果和改进。
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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