TL;DR
FRAME is a novel forensic framework that adaptively combines multiple evidence sources to improve the robustness and accuracy of image manipulation detection.
Contribution
It introduces a multi-path analysis and adaptive evidence fusion approach that enhances detection performance over traditional single-method techniques.
Findings
FRAME outperforms existing methods across various manipulation scenarios.
The adaptive selection of forensic paths improves robustness.
Multi-source evidence fusion enhances localization accuracy.
Abstract
The proliferation of sophisticated image editing tools and generative artificial intelligence models has made verifying the authenticity of digital images increasingly challenging, with important implications for journalism, forensic analysis, and public trust. Although numerous forensic algorithms, ranging from handcrafted methods to deep learning-based detectors, have been developed for manipulation detection, individual methods often suffer from limited robustness, fragmented evidence, or weak generalization across manipulation types and image conditions. To address these limitations, we present \textbf{FRAME}, a method for \textbf{F}orensic \textbf{R}outing and \textbf{A}daptive \textbf{M}ulti-path \textbf{E}vidence fusion for image manipulation detection. FRAME organizes diverse forensic algorithms into a multi-path analysis space, adaptively selects informative forensic paths for…
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