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Image Splicing Localization Using A Multi-Task Fully Convolutional Network (MFCN)

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In this work, we propose a technique that utilizes a fully convolutional network (FCN) to localize image splicing attacks. We first evaluated a single-task FCN (SFCN) trained only on the surface label. Although the SFCN is shown to provide superior performance over existing methods, it still provides a coarse localization output in certain cases. Therefore, we propose the use of a multi-task FCN (MFCN) that utilizes two output branches for multi-task learning. One branch is used to learn the surface label, while the other branch is used to learn the edge or boundary of the spliced region. We trained the networks using the CASIA v2.0 dataset, and tested the trained models on the CASIA v1.0, Columbia Uncompressed, Carvalho, and the DARPA/NIST Nimble Challenge 2016 SCI datasets. Experiments show that the SFCN and MFCN outperform existing splicing localization algorithms, and that the MFCN can achieve finer localization than the SFCN.

Ronald Salloum, Yuzhuo Ren, C.-C. Jay Kuo• 2017

Related benchmarks

TaskDatasetResultRank
Image Manipulation LocalizationNIST16
F1 Score57
42
Pixel-level Manipulation DetectionNIST
F1 Score42.2
34
Pixel-level Manipulation DetectionColumbia
F1 Score61.2
34
Pixel-level Manipulation DetectionCASIA v1+
F1 Score54.1
22
Pixel-level Manipulation DetectionCASIA v1
F1 Score54.1
14
Image Manipulation LocalizationColumbia--
14
Image Manipulation LocalizationCASIA
F1 Score54.1
10
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