News Image Steganography: A Novel Architecture Facilitates the Fake News Identification

Jizhe Zhou, Chi-Man Pun, Yu Tong
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引用次数: 1

Abstract

A larger portion of fake news quotes untampered images from other sources with ulterior motives rather than conducting image forgery. Such elaborate engraftments keep the inconsistency between images and text reports stealthy, thereby, palm off the spurious for the genuine. This paper proposes an architecture named News Image Steganography (NIS) to reveal the aforementioned inconsistency through image steganography based on GAN. Extractive summarization about a news image is generated based on its source texts, and a learned steganographic algorithm encodes and decodes the summarization of the image in a manner that approaches perceptual invisibility. Once an encoded image is quoted, its source summarization can be decoded and further presented as the ground truth to verify the quoting news. The pairwise encoder and decoder endow images of the capability to carry along their imperceptible summarization. Our NIS reveals the underlying inconsistency, thereby, according to our experiments and investigations, contributes to the identification accuracy of fake news that engrafts untampered images.
新闻图像隐写术:一种促进假新闻识别的新架构
更大一部分假新闻是别有用心地引用其他来源的未经篡改的图像,而不是进行图像伪造。这种精心设计的植入使图像和文本报告之间的不一致变得隐秘,从而将虚假的报告变成真实的报告。本文提出了一种新闻图像隐写(NIS)架构,通过基于GAN的图像隐写来揭示上述不一致性。基于源文本生成关于新闻图像的提取摘要,并且学习的隐写算法以接近感知不可见的方式对图像的摘要进行编码和解码。一旦一个编码的图像被引用,它的来源摘要可以被解码,并进一步作为基础事实来验证引用新闻。编码器和解码器的配对赋予图像的能力进行他们的难以察觉的总结。我们的NIS揭示了潜在的不一致性,因此,根据我们的实验和调查,有助于识别植入未篡改图像的假新闻的准确性。
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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