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Language-guided Hierarchical Fine-grained Image Forgery Detection and Localization

About

Differences in forgery attributes of images generated in CNN-synthesized and image-editing domains are large, and such differences make a unified image forgery detection and localization (IFDL) challenging. To this end, we present a hierarchical fine-grained formulation for IFDL representation learning. Specifically, we first represent forgery attributes of a manipulated image with multiple labels at different levels. Then, we perform fine-grained classification at these levels using the hierarchical dependency between them. As a result, the algorithm is encouraged to learn both comprehensive features and the inherent hierarchical nature of different forgery attributes. In this work, we propose a Language-guided Hierarchical Fine-grained IFDL, denoted as HiFi-Net++. Specifically, HiFi-Net++ contains four components: a multi-branch feature extractor, a language-guided forgery localization enhancer, as well as classification and localization modules. Each branch of the multi-branch feature extractor learns to classify forgery attributes at one level, while localization and classification modules segment pixel-level forgery regions and detect image-level forgery, respectively. Also, the language-guided forgery localization enhancer (LFLE), containing image and text encoders learned by contrastive language-image pre-training (CLIP), is used to further enrich the IFDL representation. LFLE takes specifically designed texts and the given image as multi-modal inputs and then generates the visual embedding and manipulation score maps, which are used to further improve HiFi-Net++ manipulation localization performance. Lastly, we construct a hierarchical fine-grained dataset to facilitate our study. We demonstrate the effectiveness of our method on $8$ by using different benchmarks for both tasks of IFDL and forgery attribute classification. Our source code and dataset are available.

Xiao Guo, Xiaohong Liu, Iacopo Masi, Xiaoming Liu• 2024

Related benchmarks

TaskDatasetResultRank
Image-level Forgery DetectionColumbia
F1 Score79.4
24
Image Forgery LocalizationCASIA 1.0+
F1 Score54.3
14
Image Forgery LocalizationIMD 2020
F1 Score42.4
14
Image Forgery LocalizationAutoSplice
F1 Score44.4
14
Image Forgery LocalizationKorus
F1 Score15.5
14
Image Forgery LocalizationNIST 16
F1 Score28.6
14
Image Forgery LocalizationColumbia
F1 Score61.6
14
Image Forgery LocalizationDSO-1--
14
Image Forgery LocalizationOpenForensics--
14
Image Forgery DetectionCASIA 1.0+
Accuracy82.2
13
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