AI-Generated Image Detection: An Empirical Study and Future Research Directions
Nusrat Tasnim, Kutub Uddin, Khalid Mahmood Malik

TL;DR
This study systematically evaluates state-of-the-art AI-generated image detection methods across multiple datasets and metrics, highlighting their strengths and limitations to guide future research in developing more robust and explainable forensic tools.
Contribution
It introduces a unified benchmarking framework for consistent evaluation of forensic methods and provides comprehensive analysis of their performance and interpretability.
Findings
Significant variability in generalization across methods
Certain methods perform well in-distribution but poorly cross-model
Evaluation metrics reveal gaps in robustness and explainability
Abstract
The threats posed by AI-generated media, particularly deepfakes, are now raising significant challenges for multimedia forensics, misinformation detection, and biometric system resulting in erosion of public trust in the legal system, significant increase in frauds, and social engineering attacks. Although several forensic methods have been proposed, they suffer from three critical gaps: (i) use of non-standardized benchmarks with GAN- or diffusion-generated images, (ii) inconsistent training protocols (e.g., scratch, frozen, fine-tuning), and (iii) limited evaluation metrics that fail to capture generalization and explainability. These limitations hinder fair comparison, obscure true robustness, and restrict deployment in security-critical applications. This paper introduces a unified benchmarking framework for systematic evaluation of forensic methods under controlled and reproducible…
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Taxonomy
TopicsDigital Media Forensic Detection · Generative Adversarial Networks and Image Synthesis · Digital and Cyber Forensics
