Feature base fusion for splicing forgery detection based on neuro fuzzy
Habib Ghaffari Hadigheh, Ghazali bin sulong

TL;DR
This paper introduces a Neuro-Fuzzy inference system to automatically fuse multiple image splicing forgery detection tools, improving accuracy and robustness in practical tampering scenarios.
Contribution
It develops an adaptive Neuro-Fuzzy system that automatically adjusts membership functions for better fusion of forgery detection tools, overcoming limitations of manual tuning.
Findings
Improved detection accuracy on benchmark datasets
Effective fusion of multiple forgery detection tools
Automatic adjustment of fuzzy membership functions
Abstract
Most of researches on image forensics have been mainly focused on detection of artifacts introduced by a single processing tool. They lead in the development of many specialized algorithms looking for one or more particular footprints under specific settings. Naturally, the performance of such algorithms are not perfect, and accordingly the provided output might be noisy, inaccurate and only partially correct. Furthermore, a forged image in practical scenarios is often the result of utilizing several tools available by image-processing software systems. Therefore, reliable tamper detection requires developing more poweful tools to deal with various tempering scenarios. Fusion of forgery detection tools based on Fuzzy Inference System has been used before for addressing this problem. Adjusting the membership functions and defining proper fuzzy rules for attaining to better results are…
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Taxonomy
TopicsDigital Media Forensic Detection · Image Processing Techniques and Applications · Anomaly Detection Techniques and Applications
