Copy-Move Detection in Optical Microscopy: A Segmentation Network and A Dataset
With increasing revelations of academic fraud, detecting forged experimental images in the biomedical field has become a public concern. The challenge lies in the fact that copy-move targets can include background tissue, small foreground objects, or both, which may be out of the training domain and...
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Zusammenfassung: | With increasing revelations of academic fraud, detecting forged experimental
images in the biomedical field has become a public concern. The challenge lies
in the fact that copy-move targets can include background tissue, small
foreground objects, or both, which may be out of the training domain and
subject to unseen attacks, rendering standard object-detection-based approaches
less effective. To address this, we reformulate the problem of detecting
biomedical copy-move forgery regions as an intra-image co-saliency detection
task and propose CMSeg-Net, a copy-move forgery segmentation network capable of
identifying unseen duplicated areas. Built on a multi-resolution
encoder-decoder architecture, CMSeg-Net incorporates self-correlation and
correlation-assisted spatial-attention modules to detect intra-image regional
similarities within feature tensors at each observation scale. This design
helps distinguish even small copy-move targets in complex microscopic images
from other similar objects. Furthermore, we created a copy-move forgery dataset
of optical microscopic images, named FakeParaEgg, using open data from the ICIP
2022 Challenge to support CMSeg-Net's development and verify its performance.
Extensive experiments demonstrate that our approach outperforms previous
state-of-the-art methods on the FakeParaEgg dataset and other open copy-move
detection datasets, including CASIA-CMFD, CoMoFoD, and CMF. The FakeParaEgg
dataset, our source code, and the CMF dataset with our manually defined
segmentation ground truths available at
``https://github.com/YoursEver/FakeParaEgg''. |
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DOI: | 10.48550/arxiv.2412.10258 |