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Fast image inpainting using exponential- threshold POCS plus conjugate gradient

机译:使用指数阈值POCS和共轭梯度快速修复图像

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摘要

Image inpainting can remove unwanted objects and.reconstruct the missing or damaged portions of an image. The projection onto convex sets (POCS) is a classical method used in image inpainting. However, the traditional POCS converges slowly due to the linear error threshold. We propose an exponential-threshold scheme, which greatly improves the convergence of the POCS. Although the exponential-threshold POCS can recover the image in about 20 iterations, it cannot reconstruct the image details very well even with hundreds of iterations. Thus, we append the non-local restoration to the exponential-threshold POCS to further refine the image details, and then we solve this objective function using the conjugate gradient. Numerical experiments show that for each iteration, the exponential-threshold POCS and the conjugate gradient have very similar computational efficiencies. For an image with various topologies of the missing areas, our scheme can recover missing pixels simultaneously and obtain a satisfied inpainting result in only 20 iterations of the exponential-threshold POCS and 20 iterations of the conjugate gradient. The proposed method can excellently restore damaged photographs and remove superimposed text. This method has less computational cost than the conjugate gradient and has a higher resolution than the POCS.
机译:图像修补可以去除不需要的对象,并重建图像的缺失或损坏部分。凸集投影(POCS)是图像修复中使用的经典方法。但是,传统的POCS由于线性误差阈值而收敛缓慢。我们提出了一种指数阈值方案,该方案极大地提高了POCS的收敛性。尽管指数阈值POCS可以在大约20次迭代中恢复图像,但是即使经过数百次迭代,它也无法很好地重建图像细节。因此,我们将非局部恢复附加到指数阈值POCS上以进一步细化图像细节,然后使用共轭梯度求解该目标函数。数值实验表明,对于每次迭代,指数阈值POCS和共轭梯度具有非常相似的计算效率。对于具有各种缺失区域拓扑的图像,我们的方案可以同时恢复缺失像素,并仅在指数阈值POCS的20次迭代和共轭梯度的20次迭代中获得满意的修复结果。所提出的方法可以很好地恢复损坏的照片并去除重叠的文字。该方法比共轭梯度具有更少的计算成本,并且比POCS具有更高的分辨率。

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