基于判别残差学习的低质量水印人脸修复

Zheng He, Xueli Wei, Kangli Zeng, Zhen Han, Qin Zou, Zhongyuan Wang
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引用次数: 1

摘要

大多数现有的图像修复方法都假设修复区域(水印)的位置是已知的,但这一假设并不总是成立。另外,实际的水印面是压缩后的低质量形式,由于压缩失真的影响,对修复非常不利。针对这些问题,本文提出了一种基于联合残差学习和协同判别网络的低质量水印人脸修复方法。我们首先采用残差学习的全局补图和基于人脸特征的局部补图,在未知水印位置下绘制出干净清晰的人脸。由于修复过程可能会扭曲真实的人脸,我们进一步提出了一种判别约束网络来保持修复后人脸的保真度。实验结果表明,人脸图像的平均PSNR提高了4.16dB,平均SSIM提高了0.08。在人脸验证中,当FPR为10%时,TPR提高了16.96%。
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Low-quality watermarked face inpainting with discriminative residual learning
Most existing image inpainting methods assume that the location of the repair area (watermark) is known, but this assumption does not always hold. In addition, the actual watermarked face is in a compressed low-quality form, which is very disadvantageous to the repair due to compression distortion effects. To address these issues, this paper proposes a low-quality watermarked face inpainting method based on joint residual learning with cooperative discriminant network. We first employ residual learning based global inpainting and facial features based local inpainting to render clean and clear faces under unknown watermark positions. Because the repair process may distort the genuine face, we further propose a discriminative constraint network to maintain the fidelity of repaired faces. Experimentally, the average PSNR of inpainted face images is increased by 4.16dB, and the average SSIM is increased by 0.08. TPR is improved by 16.96% when FPR is 10% in face verification.
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