使用深度学习技术的深度假检测:文献综述

A. Mary, A. Edison
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引用次数: 0

摘要

深度学习是一种复杂且适应性强的技术,在自然语言处理、机器学习和计算机视觉等领域得到了广泛应用。它是最近出现的深度学习驱动的应用程序之一。Deep fakes是指最近流行起来的经过修改的、高质量的、逼真的视频/图像。人们正在研究这项技术的许多不可思议的用途。虚假新闻、名人色情视频、金融诈骗、复仇色情等虚假视频的恶意使用在数字世界中呈上升趋势。因此,名人、政治家和其他知名人士特别容易受到深度假检测的挑战。近年来已经进行了大量的研究来了解深度伪造的功能,并且已经提出了许多基于深度学习的算法来检测深度伪造的视频或图片。本研究综合评估了基于几种深度学习算法的深度造假生产和检测技术。此外,还将讨论当前方法的局限性和社会中数据库的可用性。深度检测系统,既精确又自动。鉴于深度假视频/图像很容易生成和分享,缺乏有效的深度假检测系统给世界带来了严重的问题。然而,已经有各种各样的尝试来解决这个问题,并且与深度学习相关的解决方案优于传统方法。
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Deep fake Detection using deep learning techniques: A Literature Review
Deep learning is a sophisticated and adaptable technique that has found widespread use in fields such as natural language processing, machine learning, and computer vision. It is one of the most recent deep learning-powered applications to emerge. Deep fakes are altered, high-quality, realistic videos/images that have lately gained popularity. Many incredible uses of this technology are being investigated. Malicious uses of fake videos, such as fake news, celebrity pornographic videos, financial scams, and revenge porn are currently on the rise in the digital world. As a result, celebrities, politicians, and other well-known persons are particularly vulnerable to the Deep fake detection challenge. Numerous research has been undertaken in recent years to understand how deep fakes function and many deep learning-based algorithms to detect deep fake videos or pictures have been presented.This study comprehensively evaluates deep fake production and detection technologies based on several deep learning algorithms. In addition, the limits of current approaches and the availability of databases in society will be discussed. A deep fake detection system that is both precise and automatic. Given the ease with which deep fake videos/images may be generated and shared, the lack of an effective deep fake detection system creates a serious problem for the world. However, there have been various attempts to address this issue, and deep learning-related solutions outperform traditional approaches.
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