What You See is What You Get? Automatic Image Verification for Online News Content

Sarah Elkasrawi, A. Dengel, Ahmed Abdelsamad, S. S. Bukhari
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引用次数: 20

Abstract

Consuming news over online media has witnessed rapid growth in recent years, especially with the increasing popularity of social media. However, the ease and speed with which users can access and share information online facilitated the dissemination of false or unverified information. One way of assessing the credibility of online news stories is by examining the attached images. These images could be fake, manipulated or not belonging to the context of the accompanying news story. Previous attempts to news verification provided the user with a set of related images for manual inspection. In this work, we present a semi-automatic approach to assist news-consumers in instantaneously assessing the credibility of information in hypertext news articles by means of meta-data and feature analysis of images in the articles. In the first phase, we use a hybrid approach including image and text clustering techniques for checking the authenticity of an image. In the second phase, we use a hierarchical feature analysis technique for checking the alteration in an image, where different sets of features, such as edges and SURF, are used. In contrast to recently reported manual news verification, our presented work shows a quantitative measurement on a custom dataset. Results revealed an accuracy of 72.7% for checking the authenticity of attached images with a dataset of 55 articles. Finding alterations in images resulted in an accuracy of 88% for a dataset of 50 images.
所见即所得?在线新闻内容的自动图像验证
近年来,尤其是随着社交媒体的日益普及,在线媒体上的新闻消费增长迅速。然而,用户在网上访问和分享信息的便利和速度促进了虚假或未经核实的信息的传播。评估网络新闻报道可信度的一种方法是检查附带的图片。这些图片可能是假的、经过处理的,或者不属于相关新闻报道的背景。之前的新闻验证尝试为用户提供了一组相关图像,供人工检查。在这项工作中,我们提出了一种半自动方法,通过对文章中的图像进行元数据和特征分析,帮助新闻消费者即时评估超文本新闻文章中信息的可信度。在第一阶段,我们使用混合方法,包括图像和文本聚类技术来检查图像的真实性。在第二阶段,我们使用分层特征分析技术来检查图像中的变化,其中使用了不同的特征集,如边缘和SURF。与最近报道的手动新闻验证相反,我们提出的工作显示了对自定义数据集的定量测量。结果显示,在55篇文章的数据集上,检查附加图像真实性的准确率为72.7%。在50张图像的数据集中,发现图像变化的准确率达到88%。
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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