Region duplication blind detection based on multiple feature combination

ICMLC(2012)

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摘要
The paper presents an efficient approach based on feature combination for detecting the region splice image by copy-paste manipulation. The combined features include 1D moment, 2D moment and Markov feature, which could efficiently capture the most representative features. Each block used for test is represented by the combined feature, and the spliced region is detected by feature match. Experiments on Columbia Image Splicing Detection Evaluation Dataset demonstrates that the copy-paste forgery regions could be accurately detected by the presented method.
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关键词
copy-paste forgery regions,feature combination,multiple feature combination,image matching,markov feature,1d moment,columbia image splicing detection evaluation dataset,copy-paste manipulation,region splice image detection,spliced region,spliced region detection,feature extraction,object detection,feature matching,region duplication blind detection,markov processes,copy-paste forgery,2d moment,security of data
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