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GCA-Net : Utilizing Gated Context Attention for Improving Image Forgery Localization and Detection

Author Affiliations
Shahjalal University of Science and Technology, University of Alberta, Fordham University
Published In2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)
Year2022
Citations41

Abstract

Forensic analysis of manipulated pixels requires the identification of various hidden and subtle features from images. Conventional image recognition models generally fail at this task because they are biased and more attentive towards the dominant local and spatial features. In this paper, we propose a novel Gated Context Attention Network (GCA-Net) that utilizes non-local attention in conjunction with a gating mechanism in order to capture the finer image discrepancies and better identify forged regions. The proposed framework uses high dimensional embeddings to filter and aggregate the relevant context from coarse feature maps at various stages of the decoding process. This improves the network’s understanding of global differences and reduces false-positive localizations. Our evaluation on standard image forensic benchmarks shows that…
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