SFNet: Fusion of Spatial and Frequency-Domain Features for Remote Sensing Image Forgery Detection
Ji Qi, Xinchang Zhang, Dingqi Ye, Yongjia Ruan, Xin Guo, Shaowen Wang, Haifeng Li

TL;DR
SFNet is a novel framework that combines spatial and frequency domain features to improve the detection of fake remote sensing images, addressing the limitations of single-feature methods and enhancing generalization across diverse data.
Contribution
The paper introduces SFNet, a new method that fuses spatial and frequency features with attention mechanisms for more robust remote sensing image forgery detection.
Findings
SFNet outperforms existing methods by 4%-15.18% in accuracy.
It demonstrates strong generalization across multiple datasets.
The dual-domain feature approach effectively captures diverse forgery artifacts.
Abstract
The rapid advancement of generative artificial intelligence is producing fake remote sensing imagery (RSI) that is increasingly difficult to detect, potentially leading to erroneous intelligence, fake news, and even conspiracy theories. Existing forgery detection methods typically rely on single visual features to capture predefined artifacts, such as spatial-domain cues to detect forged objects like roads or buildings in RSI, or frequency-domain features to identify artifacts from up-sampling operations in adversarial generative networks (GANs). However, the nature of artifacts can significantly differ depending on geographic terrain, land cover types, or specific features within the RSI. Moreover, these complex artifacts evolve as generative models become more sophisticated. In short, over-reliance on a single visual cue makes existing forgery detectors struggle to generalize across…
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Taxonomy
TopicsDigital Media Forensic Detection · Anomaly Detection Techniques and Applications · Adversarial Robustness in Machine Learning
MethodsALIGN
