Visible Watermark Removal via Self-calibrated Localization and
Background Refinement
- URL: http://arxiv.org/abs/2108.03581v1
- Date: Sun, 8 Aug 2021 06:43:55 GMT
- Title: Visible Watermark Removal via Self-calibrated Localization and
Background Refinement
- Authors: Jing Liang, Li Niu, Fengjun Guo, Teng Long, Liqing Zhang
- Abstract summary: Superimposing visible watermarks on images provides a powerful weapon to cope with the copyright issue.
Modern watermark removal methods perform watermark localization and background restoration simultaneously.
We propose a two-stage multi-task network to address the above issues.
- Score: 21.632823897244037
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Superimposing visible watermarks on images provides a powerful weapon to cope
with the copyright issue. Watermark removal techniques, which can strengthen
the robustness of visible watermarks in an adversarial way, have attracted
increasing research interest. Modern watermark removal methods perform
watermark localization and background restoration simultaneously, which could
be viewed as a multi-task learning problem. However, existing approaches suffer
from incomplete detected watermark and degraded texture quality of restored
background. Therefore, we design a two-stage multi-task network to address the
above issues. The coarse stage consists of a watermark branch and a background
branch, in which the watermark branch self-calibrates the roughly estimated
mask and passes the calibrated mask to background branch to reconstruct the
watermarked area. In the refinement stage, we integrate multi-level features to
improve the texture quality of watermarked area. Extensive experiments on two
datasets demonstrate the effectiveness of our proposed method.
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