Beyond Fully Supervised Pixel Annotations: Scribble-Driven Weakly-Supervised Framework for Image Manipulation Localization
Songlin Li, Guofeng Yu, Zhiqing Guo, Yunfeng Diao, Dan Ma, Gaobo Yang

TL;DR
This paper introduces a novel scribble-based weakly supervised framework for image manipulation localization, significantly reducing annotation effort while outperforming fully supervised methods in various scenarios.
Contribution
It presents the first scribble-based IML dataset and a comprehensive weakly supervised framework with innovative modules and loss functions for improved manipulation detection.
Findings
Outperforms fully supervised methods in accuracy.
Effective in both in-distribution and out-of-distribution scenarios.
Reduces annotation effort with scribble supervision.
Abstract
Deep learning-based image manipulation localization (IML) methods have achieved remarkable performance in recent years, but typically rely on large-scale pixel-level annotated datasets. To address the challenge of acquiring high-quality annotations, some recent weakly supervised methods utilize image-level labels to segment manipulated regions. However, the performance is still limited due to insufficient supervision signals. In this study, we explore a form of weak supervision that improves the annotation efficiency and detection performance, namely scribble annotation supervision. We re-annotate mainstream IML datasets with scribble labels and propose the first scribble-based IML (Sc-IML) dataset. Additionally, we propose the first scribble-based weakly supervised IML framework. Specifically, we employ self-supervised training with a structural consistency loss to encourage the model…
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Taxonomy
TopicsImage Processing Techniques and Applications · Advanced Vision and Imaging · Cell Image Analysis Techniques
