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Rethinking VLMs for Image Forgery Detection and Localization

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With the rapid rise of Artificial Intelligence Generated Content (AIGC), image manipulation has become increasingly accessible, posing significant challenges for image forgery detection and localization (IFDL). In this paper, we study how to fully leverage vision-language models (VLMs) to assist the IFDL task. In particular, we observe that priors from VLMs hardly benefit the detection and localization performance and even have negative effects due to their inherent biases toward semantic plausibility rather than authenticity. Additionally, the location masks explicitly encode the forgery concepts, which can serve as extra priors for VLMs to ease their training optimization, thus enhancing the interpretability of detection and localization results. Building on these findings, we propose a new IFDL pipeline named IFDL-VLM. To demonstrate the effectiveness of our method, we conduct experiments on 9 popular benchmarks and assess the model performance under both in-domain and cross-dataset generalization settings. The experimental results show that we consistently achieve new state-of-the-art performance in detection, localization, and interpretability.Code is available at: https://github.com/sha0fengGuo/IFDL-VLM.

Shaofeng Guo, Jiequan Cui, Richang Hong• 2026

Related benchmarks

TaskDatasetResultRank
Tamper LocalizationColumbia
IoU77
28
Tamper LocalizationDSO
IoU55
22
Tamper LocalizationCASIA 1+
IoU60
22
Tamper LocalizationNIST
IoU33
22
Tamper LocalizationKorus
mIoU19
22
Tamper LocalizationIMD 2020
IoU46
22
Tamper LocalizationDeepfake
IoU39
12
Tamper LocalizationMMTD-Set Average
IoU47
12
Tamper LocalizationAIGC-Editing
IoU47
12
Forgery DetectionSID-Set
Real Accuracy99.8
11
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