Video Authentication Based on Statistical Local Information

M. Al-Athamneh, F. Kurugollu, D. Crookes, M. Farid
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引用次数: 3

Abstract

With the outgrowth of video editing tools, video information trustworthiness becomes a hypersensitive field. Today many devices have the capability of capturing digital videos such as CCTV, digital cameras and mobile phones and these videos may transmitted over the Internet or any other non secure channel. As digital video can be used to as supporting evidence, it has to be protected against manipulation or tampering. As most video authentication techniques are based on watermarking and digital signatures, these techniques are effectively used in copyright purposes but difficult to implement in other cases such as video surveillance or in videos captured by consumer's cameras. In this paper we propose an intelligent technique for video authentication which uses the video local information which makes it useful for real world applications. The proposed algorithm relies on the video's statistical local information which was applied on a dataset of videos captured by a range of consumer video cameras. The results show that the proposed algorithm has potential to be a reliable intelligent technique in digital video authentication without the need to use for SVM classifier which makes it faster and less computationally expensive in comparing with other intelligent techniques.
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基于统计本地信息的视频认证
随着视频编辑工具的发展,视频信息的可信度成为一个高度敏感的领域。今天,许多设备都有捕捉数字视频的能力,如闭路电视、数码相机和移动电话,这些视频可以通过互联网或任何其他不安全的渠道传输。由于数字视频可以作为辅助证据,因此必须保护它不被操纵或篡改。由于大多数视频认证技术是基于水印和数字签名的,这些技术在版权目的中有效使用,但在视频监控或消费者相机拍摄的视频等其他情况下难以实现。本文提出了一种利用视频本地信息的智能视频认证技术,使其适用于实际应用。提出的算法依赖于视频的统计局部信息,这些信息应用于一系列消费者摄像机拍摄的视频数据集。结果表明,该算法不需要使用支持向量机分类器,与其他智能技术相比,速度更快,计算成本更低,有潜力成为一种可靠的数字视频认证智能技术。
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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