Computer Science ›› 2018, Vol. 45 ›› Issue (4): 173-177.doi: 10.11896/j.issn.1002-137X.2018.04.029

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Passive Image-splicing Detection Based on Multi-residual Markov Model

LUO Xiao-yang, HUO Hong-tao, WANG Meng-si and CHEN Ya-fei   

  • Online:2018-04-15 Published:2018-05-11

Abstract: Aiming at the problem that calculating the difference matrix singly for the traditional Markov feature is not robust to the splicing detection,this paper presented a color multi-residual type Markov feature for splicing detection.This method introduces the residual model from rich models for steganalysis(SRM) to improve the traditional Markov features,respectively extracts 10 different types of Markov features from three color channels,and trains 30 unique SVM classifiers to make the classification through the proposed decision-making algorithm.This method achieves the accuracy of 95.40% at Columbia image splicing detection evaluation dataset.

Key words: Image forensics,Splicing detection,Rich models for steganalysis,Markov feature

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