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Riemannian Loss for Image Restoration

机译:图像恢复的rimananian损失

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摘要

Deep neural networks are widely used for image restoration, however the loss criteration is usually set as l2.ll2 penalizes larger errors, which is unstable for outliers. To avoid the disadvantages, l1 is utilized as a more robust and well behaved loss. This paper proposes a novel loss function for restoration networks, which measures geodesic distance in Riemannian manifold and exploits the outstanding properties of l1. Different from l1 and l2 loss which reflects pixel distance, our loss in Riemannian reflects the structure distance of image. The proposed loss not only preserves the robutness of l1 loss, but also reflects the image contrasts. Experimental results on image super resolution and compressed sensing show that our proposed loss function achieves more accurate reconstructions, according to both the objective and perceptual qualities.
机译:深度神经网络广泛用于图像恢复,但丢失标准通常被设置为L2.LL2惩罚更大的错误,这对异常值不稳定。为了避免缺点,L1被用作更强大,并且表现良好的损失。本文提出了一种恢复网络的新型损失函数,其测量黎曼歧管中的测地距并利用L1的出色特性。不同于L1和L2损耗,反映像素距离,我们在Riemannian中的损失反映了图像的结构距离。拟议的损失不仅保留了L1损失的强盗性,而且还反映了图像对比。图像超分辨率和压缩感测的实验结果表明,根据目标和感知品质,我们所提出的损失功能更加准确地实现了更准确的重建。

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