基于相似度分析的监控视频帧间伪造检测技术

Anas Abdullahi, M. Bagiwa, A. Roko, Samaila Buda
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引用次数: 2

摘要

背景:在视频伪造中,帧的插入、复制和删除是最常见的伪造,攻击者使用它来改变目标视频以达到恶意目的。多年来,研究人员已经提出使用主动和被动技术来检测视频伪造。利用数字签名和水印等嵌入式特征,主动方法被用来检测数字视频中变化的发生。然而,基于主动方法的技术只适用于专门的硬件设备。另一方面,被动技术是利用视频中编码的行为线索来检测伪造。本文提出了一种基于帧相似度分析的被动视频伪造检测系统。使用该技术检测帧间伪造(插入、删除和复制),该技术不受场景变化的影响。该技术的总体精度为98.07%,召回率为100%,准确率为99.01%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Inter-Frame Forgery Detection Technique for Surveillance Videos Based on Analysis of Similarities
Background: In video forgeries, the insertion, duplication and deletion of frames are the most common forgeries that are used by attackers to alter targeted videos for malicious intent. Researchers have proposed the use of active and passive technologies for detecting video forgeries over the years. Active approaches are used to detect the occurrence of alterations in digital video with the use of embedded features such as digital signature and watermarks. However, techniques that are based on active approaches are only applicable to specialized hardware devices. A passive technique, on the other hand, detects forgery using the behavioral cues encoded in a video. In this paper, a passive video forgery detection system based on frame similarity analysis is presented.Inter frame forgeries (Insertion, Deletion, and Duplication) were detected using the proposed technique, which was unaffected by scene changes.The technique has the overall performance of 98.07% precision, 100% recall and 99.01% accuracy.
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