Investigating the Evolving Landscape of Deepfake Technology: Generative AI's Role in it's Generation and Detection

Mrs Supriya Shree, Riddhi Arya, Saket Kumar Roy
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Abstract

The world of artificial intelligence is constantly changing, with Generative AI and Large Language Models (LLMs) leading the way in bringing new technological advancements. This paper offers a detailed look at these groundbreaking technologies and how they are shaping the digital world today. We explore the technical aspects of Generative AI and LLMs, explain their unique features, and compare them to traditional AI models.One of the key focuses of our research is the growing issue of DeepFakes—artificial intelligence-generated media that presents a significant challenge in verifying content. We conduct a thorough examination of few deepfake detection techniques out of which we will be implementing and analyzing one of them. Our research implements a framework for Deep Fake Image Detection. The suggested solution utilizes a RESNET-50(Residual Network with 50 layers) and MTCNN (Multi-task Cascaded Convolutional Networks) models for detecting whether the images are real or fake. This study conducts the Hypothesis testing for the proposed solution taking in consideration that the current Deepfake detection algorithms are less effective in detecting highly realistic Deepfakes compared to less sophisticated manipulations. By investigating the convergence of deep learning, neural networks, and sophisticated algorithms, we set the stage for advancements in AI-based content verification.
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调查 Deepfake 技术的演变情况:生成式人工智能在其生成和检测中的作用
人工智能世界正在不断发生变化,其中生成式人工智能和大型语言模型(LLM)引领着新的技术进步。本文将详细介绍这些突破性技术,以及它们如何塑造当今的数字世界。我们探讨了生成式人工智能和大型人工智能模型的技术层面,解释了它们的独特功能,并将它们与传统人工智能模型进行了比较。我们的研究重点之一是日益严重的深度伪造(DeepFakes)问题--人工智能生成的媒体给内容验证带来了巨大挑战。我们对几种深度伪造检测技术进行了深入研究,并将对其中一种技术进行实施和分析。我们的研究为深度虚假图像检测提供了一个框架。建议的解决方案利用 RESNET-50(50 层残差网络)和 MTCNN(多任务级联卷积网络)模型来检测图像的真假。考虑到当前的深度赝品检测算法在检测高度逼真的深度赝品方面不如不太复杂的操作有效,本研究对提出的解决方案进行了假设检验。通过研究深度学习、神经网络和复杂算法的融合,我们为基于人工智能的内容验证奠定了基础。
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