Generative adversarial networks-based AI-generated imagery authentication using frequency domain analysis

Nihal Poredi, Monica Sudarsan, Enoch Solomon, Deeraj Nagothu, Yu Chen
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Abstract

In an era characterized by the prolific generation of digital imagery through advanced artificial intelligence, the need for reliable methods to authenticate actual photographs from AI-generated ones has become paramount. The ever-increasing ubiquity of AI-generated imagery, which seamlessly blends with authentic photographs, raises concerns about misinformation and trustworthiness. Authenticating these images has taken on critical significance in various domains, including journalism, forensic science, and social media. Traditional methods of image authentication often struggle to adapt to the increasingly sophisticated nature of AI-generated content. In this context, frequency domain analysis emerges as a promising avenue due to its effectiveness in uncovering subtle discrepancies and patterns that are less apparent in the spatial domain. Delving into the imperative task of imagery authentication, this paper introduces a novel Generative Adversarial Networks (GANs) based AI-generated Imagery Authentication (GANIA) method using frequency domain analysis. By exploiting the inherent differences in frequency spectra, GANIA uncovers unique signatures that are difficult to replicate, ensuring the integrity and authenticity of visual content. By training GANs on vast datasets of real images, we create AI-generated counterparts that closely mimic the characteristics of authentic photographs. This approach enables us to construct a challenging and realistic dataset, ideal for evaluating the efficacy of frequency domain analysis techniques in image authentication. Our work not only highlights the potential of frequency domain analysis for image authentication but also underscores the importance of adopting generative AI approaches in studying this critical topic. Through this innovative fusion of AI and frequency domain analysis, we contribute to advancing image forensics and preserving trust in visual information in an AI-driven world.
利用频域分析进行基于生成对抗网络的人工智能图像认证
在这个以通过先进的人工智能生成大量数字图像为特征的时代,最重要的是需要可靠的方法来验证真实照片与人工智能生成的照片之间的真伪。人工智能生成的图像无处不在,与真实照片完美融合,这引起了人们对错误信息和可信度的担忧。在新闻、法医学和社交媒体等各个领域,对这些图像进行验证具有至关重要的意义。传统的图像认证方法往往难以适应人工智能生成内容日益复杂的性质。在这种情况下,频域分析因其能有效发现空间域中不太明显的细微差异和模式而成为一种很有前景的方法。针对图像认证这一迫切任务,本文介绍了一种基于生成对抗网络(GANs)、使用频域分析的新型人工智能生成图像认证(GANIA)方法。通过利用频谱的内在差异,GANIA 发现了难以复制的独特签名,从而确保了视觉内容的完整性和真实性。通过在大量真实图像数据集上训练 GAN,我们创建了人工智能生成的对等图像,与真实照片的特征非常相似。这种方法使我们能够构建一个具有挑战性的真实数据集,非常适合用于评估频域分析技术在图像认证中的功效。我们的工作不仅凸显了频域分析在图像认证方面的潜力,还强调了采用生成式人工智能方法研究这一重要课题的重要性。通过这种人工智能与频域分析的创新融合,我们为推进图像取证和在人工智能驱动的世界中维护视觉信息的信任度做出了贡献。
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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