2022
DOI: 10.1109/access.2022.3188299
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A Statistical Modeling Framework for DCT Coefficients of Tampered JPEG Images and Forgery Localization

Abstract: Various manipulations on JPEG images introduce single and multiple compression artifacts for forged and unmodified areas respectively. Based on the statistical analysis of JPEG compression cycle and on the finite mixture paradigm, we propose in this paper a modeling framework for AC DCT coefficients of such tampered JPEG images. Its accuracy is numerically assessed using the Kullback-Leibler divergence on the basis of a tampered JPEG image dataset built from six well-known uncompressed color image databases. T… Show more

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