Securing the Socio-Cyber World: Multiorder Attribute Node Association Classification for Manipulated Media | IEEE Journals & Magazine | IEEE Xplore
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Securing the Socio-Cyber World: Multiorder Attribute Node Association Classification for Manipulated Media


Abstract:

With the rapid development of information technology, social network has become an indispensable part of daily life. People have been able to get news from all over the w...Show More

Abstract:

With the rapid development of information technology, social network has become an indispensable part of daily life. People have been able to get news from all over the world through social networks for a long time. People spend more time online than they do in real life. However, the information we get in the world of social network is not purely benign. Due to the development of artificial intelligence technology, more and more tampered media information appears in social networks, some for entertainment, while others become the dark side of social networks, of which the most harmful is to people in the media tamper. For fake news and misinformation caused by media tampering, we need to trace the source and clearly distinguish the truth from the manipulated. This article proposes an image media forgery classification method of multiorder attribute nodes. First, we use different methods to extract the edge, texture, grayscale, and color attributes of the image. Second, according to the characteristics of different attributes, we calculate the first-order entropy of edge attributes, the second-order entropy of texture attributes, local entropy of grayscale, and color properties. Finally, we represent each image with some nodes and build a graph convolutional network (GCN) to classify real and fake images. Experimental results on mainstream media manipulation datasets show that our method is the state-of-the-art compared with similar methods.
Published in: IEEE Transactions on Computational Social Systems ( Volume: 11, Issue: 4, August 2024)
Page(s): 4809 - 4818
Date of Publication: 25 October 2022

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