Publication | Closed Access
A deep learning approach to detection of splicing and copy-move forgeries in images
501
Citations
22
References
2016
Year
Unknown Venue
Image ClassificationConvolutional Neural NetworkImage AnalysisMachine LearningMachine VisionCopy-move ForgeriesPattern RecognitionEngineeringFeature LearningImage ForensicsDeep Learning ApproachInformation ForensicsSvm ClassificationImage ManipulationDeep LearningDeep Learning TechniqueComputer VisionVideo Forensics
In this paper, we present a new image forgery detection method based on deep learning technique, which utilizes a convolutional neural network (CNN) to automatically learn hierarchical representations from the input RGB color images. The proposed CNN is specifically designed for image splicing and copy-move detection applications. Rather than a random strategy, the weights at the first layer of our network are initialized with the basic high-pass filter set used in calculation of residual maps in spatial rich model (SRM), which serves as a regularizer to efficiently suppress the effect of image contents and capture the subtle artifacts introduced by the tampering operations. The pre-trained CNN is used as patch descriptor to extract dense features from the test images, and a feature fusion technique is then explored to obtain the final discriminative features for SVM classification. The experimental results on several public datasets show that the proposed CNN based model outperforms some state-of-the-art methods.
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