Abstract

With the rapid development of advanced media technology, especially the popularization of digital cameras and image editing software, digital images can be easily forged without leaving visible clues. Therefore, image forensics technology for identifying the accuracy, integrity, and originality of digital images has become increasingly important. Photo-response non-uniformity (PRNU) noise, a unique fingerprint of imaging sensors, is a valuable forgery detection tool because of its consistently good detection performance. All kinds of forgeries, including copy-move and splicing, can be dealt with in a uniform manner. This paper addresses the problem of forgery localization based on PRNU estimation and aims to improve the resolution of PRNU-based algorithms. Different from traditional overlapping and sliding window-based methods, in which PRNU correlations are estimated on overlapped patches, the proposed scheme is analyzed based on nonoverlapping and irregular patches. First, the test image is segmented into nonoverlapped patches with multiple scales. Second, correlations of PRNU are estimated on nonoverlapped patches to obtain the real-valued candidate tampering probability map for each individual scale. Then, all of the candidate maps are fused into a single and more reliable probability map through an adaptive window strategy. In the final step, the final decision map is obtained by adopting a conditional random field (CRF) to model neighborhood interactions. The contributions of this work include the following: a novel PRNU-based forgery localization scheme using multi-scale nonoverlapping segmentation is proposed for the first time. Furthermore, the adaptive fusion strategy involves selecting the best candidate tampering probability individually for each location in the image. Additionally, the experimental results prove that the proposed scheme can achieve much better detection results and robustness compared with the existing state-of-the-art PRNU-based methods.

Highlights

  • Today’s advanced media technology, such as digital image processing, video coding [38], highefficiency video coding (HEVC) [24, 35], Internet of Things (IoT) [36, 45], and cloud computing (CC) [39], represents a fascinating time that will considerably affect daily life

  • This is the first time that a multi-scale simple linear iterative clustering (SLIC) strategy is proposed in the framework of Photoresponse non-uniformity (PRNU)-based algorithms

  • The noise residuals are extracted using Eq (2) from a number of lowcontrast images taken by the target camera; the camera PRNU k is obtained by maximum likelihood estimation of noise residuals [7]

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Summary

Introduction

Today’s advanced media technology, such as digital image processing, video coding [38], highefficiency video coding (HEVC) [24, 35], Internet of Things (IoT) [36, 45], and cloud computing (CC) [39], represents a fascinating time that will considerably affect daily life. Digital images are being used in many applications such as the military, medical diagnosis, art pieces, and photography. The reliability of digital images is becoming an important issue. It is very easy to manipulate digital images without leaving visible traces using photo editing software. It is important to focus on the image forensics field. One of the principal problems in image forensics is determining whether a particular image is authentic and, if manipulated, to localize which parts have been altered. Since forgery localization requires pixel-level analysis rather than image-level analysis, it faces more challenges compared to forgery detection

Related works
Contributions
Background
The proposed PRNU-based multi-scale tampering localization algorithm
Multi-scale segmentation
Fusion of the multi-scale tampering probability maps
Obtaining the final decision map
Experimental results
Dataset selection
Parameter selection
Localization performance and comparisons
JPEG compression robustness test
Conclusion
Full Text
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