Publication | Open Access
Generate, Segment, and Refine: Towards Generic Manipulation Segmentation
134
Citations
28
References
2020
Year
EngineeringMachine LearningSoftware EngineeringInformation ForensicsImage ManipulationComputer-aided DesignStyle TransferImage ForensicsManipulated ImagesSoftware AnalysisImage AnalysisData SciencePattern RecognitionBoundary ArtifactsSynthetic Image GenerationMachine VisionDesignComputer ScienceHuman Image SynthesisDeep LearningData ManipulationSoftware DesignComputer VisionCode RefactoringImage BlendingProgram AnalysisFormal MethodsProgram Synthesis
Detecting manipulated images has become a significant emerging challenge. The advent of image sharing platforms and the easy availability of advanced photo editing software have resulted in a large quantities of manipulated images being shared on the internet. While the intent behind such manipulations varies widely, concerns on the spread of false news and misinformation is growing. Current state of the art methods for detecting these manipulated images suffers from the lack of training data due to the laborious labeling process. We address this problem in this paper, for which we introduce a manipulated image generation process that creates true positives using currently available datasets. Drawing from traditional work on image blending, we propose a novel generator for creating such examples. In addition, we also propose to further create examples that force the algorithm to focus on boundary artifacts during training. Strong experimental results validate our proposal.
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