Revolutionizing Digital Content Authentication: The Power Of Synthetic Media Detection
Neha Chauhan1, Vaibhav Pal2, Shivam Singh3, Shruti Srivastava4, Sushant Kumar Singh5
1 Guide Of Department of Computer Science Engineering, Babu Banarasi Das Institute of Technology and Management, Lucknow
2 Bachelor of Technology in Computer Science Engineering, Babu Banarasi Das Institute of Technology and Management, Lucknow
3 Bachelor of Technology in Computer Science Engineering, Babu Banarasi Das Institute of Technology and Management, Lucknow
4 Bachelor of Technology in Computer Science Engineering, Babu Banarasi Das Institute of Technology and Management, Lucknow
5 Bachelor of Technology in Computer Science Engineering, Babu Banarasi Das Institute of Technology and Management, Lucknow
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ABSTRACT
Synthetic media, powered by artificial intelligence, has revolutionized content creation, enabling hyper-realistic manipulations of images and videos. While these advancements have legitimate applications in entertainment, education, and accessibility, they also present significant risks, including misinformation, fraud, and security breaches. This paper explores the fundamentals of synthetic media detection, various detection methodologies, and their impact on digital content verification. It also examines the benefits and challenges of these detection mechanisms, emphasizing different approaches adopted across AI-driven media authentication.
Synthetic media detection addresses the challenge of distinguishing real from AI-generated content, as the accessibility and sophistication of generative models continue to increase. Unlike traditional content verification methods, AI-powered detection techniques leverage deep learning models to analyze inconsistencies in facial expressions, pixel-level artifacts, and metadata anomalies. By integrating machine learning algorithms with advanced forensic analysis, these detection systems enhance accuracy and efficiency, allowing for broader applications in cybersecurity, journalism, and social media moderation.
Key Words: Synthetic Media, Generative Adversarial Networks (GANs), Convolutional Neural Networks (CNNs), AI-Generated Content, Digital Forensics, Metadata Analysis, Adversarial Robustness, Explainable AI, Multimodal Detection, Blockchain-Based Verification, Ethical AI