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Mesoscopic Insights: Orchestrating Multi-scale & Hybrid Architecture for Image Manipulation Localization

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The mesoscopic level serves as a bridge between the macroscopic and microscopic worlds, addressing gaps overlooked by both. Image manipulation localization (IML), a crucial technique to pursue truth from fake images, has long relied on low-level (microscopic-level) traces. However, in practice, most tampering aims to deceive the audience by altering image semantics. As a result, manipulation commonly occurs at the object level (macroscopic level), which is equally important as microscopic traces. Therefore, integrating these two levels into the mesoscopic level presents a new perspective for IML research. Inspired by this, our paper explores how to simultaneously construct mesoscopic representations of micro and macro information for IML and introduces the Mesorch architecture to orchestrate both. Specifically, this architecture i) combines Transformers and CNNs in parallel, with Transformers extracting macro information and CNNs capturing micro details, and ii) explores across different scales, assessing micro and macro information seamlessly. Additionally, based on the Mesorch architecture, the paper introduces two baseline models aimed at solving IML tasks through mesoscopic representation. Extensive experiments across four datasets have demonstrated that our models surpass the current state-of-the-art in terms of performance, computational complexity, and robustness.

Xuekang Zhu, Xiaochen Ma, Lei Su, Zhuohang Jiang, Bo Du, Xiwen Wang, Zeyu Lei, Wentao Feng, Chi-Man Pun, Jizhe Zhou• 2024

Related benchmarks

TaskDatasetResultRank
Image Manipulation LocalizationCAT-Net evaluation protocol (test)
Mean Binary F159.3
84
Image Manipulation LocalizationNIST16
F1 Score82.61
75
Artifact DetectionOpenMMSec
Deepfake EFS83
68
Image Manipulation LocalizationCoverage
F1 Score58.62
49
Image Manipulation LocalizationCAT-Net (test)
Mean Binary F159.3
42
Image Manipulation LocalizationColumbia
F1 Score97.63
42
Image Manipulation LocalizationCASIA v1
F1 Score84
36
Image Manipulation LocalizationIMD20
F1 Score43.64
24
Image Forgery DetectionForensicHub IFF-Protocol v2025 (test)
FF-c400.767
23
Pixel-level Forgery LocalizationColumbia
F189.05
20
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