In this study, a self-supervised CNN is introduced for image watermark removal, addressing the limitations of traditional supervised methods. The proposed SWCNN leverages a heterogeneous U-Net architecture and a mixed loss to improve the robustness and quality of removing watermarks. Experimental results demonstrate the superiority of SWCNN over popular CNNs in image watermark removal.
The research focuses on the challenges faced by traditional methods due to the lack of reference images in real-world scenarios. By introducing a self-supervised mechanism, paired data of watermarked images and reference images are constructed based on watermark distribution. This innovative approach enhances the robustness and effectiveness of image watermark removal techniques.
Furthermore, the study highlights the importance of texture information in addition to structural features for achieving high-quality results in image watermark removal. The proposed SWCNN showcases significant improvements in performance compared to existing methods, making it a promising solution for practical applications.
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