Department of Computer Science, Laurentian University, Sudbury, ON P3E 2C6, Canada
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Using U-NET with Grasshopper Optimisation to Spot Image Forgery on Social Media
Author(s): Kalpuerty Derwe*
In today's digital age, social media platforms have become a ubiquitous medium for sharing information, experiences, and images. However, this
convenience has also given rise to image forgery, a form of digital manipulation where images are altered to deceive viewers. Detecting image
forgery is crucial to maintaining trust and credibility on social media platforms. In this article, we explore the combination of U-Net, a deep learning
architecture, and Grasshopper Optimization, a metaheuristic algorithm, to enhance the accuracy of image forgery detection. The proliferation of
advanced image editing tools has made it increasingly difficult to differentiate between authentic and manipulated images. Image forgery can
take many forms, such as splicing, copy-move, retouching, and more. These manipulated images can be used for malicious purposes, including
spreading f.. Read More»
DOI:
10.37421/2151-6200.2023.14.568
Arts and Social Sciences Journal received 1413 citations as per Google Scholar report