在线新闻中的图像取证

Federica Lago, Quoc-Tin Phan, G. Boato
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引用次数: 3

摘要

识别网络新闻中的假图片是一个具有挑战性的问题。这在紧急情况下尤其如此,当记者可能会插入高影响力的图片,使一条新闻更吸引读者,而忽略了检查其真实性和来源。鉴于这项任务的重要性,在文献中,有可能找到从不同角度解决问题的几种尝试。本文面临的具体问题是识别在线新闻中被修改或错误语境化的图像,即在不同地点和/或时间拍摄的图像与其相关的事件。为了识别图像篡改,利用并结合了许多图像取证技术。另一方面,对于错误语境化检测,本文提出了一种文本分析方法,该方法基于从与图像相关的新闻中提取特征,并以相关图像为中心从在线检索的文本信息中提取特征。在实验室数据上获得的结果相当令人满意,在某些情况下,结果提高了图像取证的技术水平。该方法在三个数据集上进行了测试,其中一个数据集已经在文献中使用,而其他数据集则创建了临时数据集以进一步研究其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Forensics in Online News
Recognizing fake images in online news is a challenging problem. This is especially true in the case of critical situations, when journalists might insert high-impact images to make a piece of news more appealing to the readers, neglecting to check their authenticity and provenance. Given the importance of this task, in the literature, it is possible to find several attempts to solve the problem from different points of view. This paper faces the specific problem of recognizing images in online news which have been modified or mis-contextualized, i.e. images taken in a different place and/or time with respect to the event to which they are associated. To identify image tampering a number of image forensic techniques were exploited and combined. On the other hand, for mis-contextualization detection, a textual analysis approach is proposed based on the extraction of features from the news the image is associated with, and from textual information retrieved online using the image at stake as pivot. The obtained results are rather satisfactory on laboratory data, with results that in some cases improve the state of the art for image forensics. The method was tested on three datasets, one of which already used in the literature, while the others created ad-hoc to further investigate its performances.
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