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Highly Efficient Local Non-Texture Image Inpainting Based on Partial Differential Equation

机译:基于偏微分方程的高效局部非纹理图像修复

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摘要

Image in painting has been a popular study point in recent years and a number of strategies have been developed. Partial differential equation (PDE) image in painting approach often acts as a fundamental building block in this area. However, the high computing load limits the application of PDE-based image in painting, especially in mobile terminal. In this paper, first an enhanced Curvature-Driven Diffusions (ECDD) model is proposed to improve the repairing performance. Then a fast local non-texture in painting scheme is performed based on ECDD and total variation (TV) to make the computing of the PDE-based image in painting more efficient. The experimental results show that the proposed strategy not only can repair the long disconnected objects more accurately, but also can greatly shorten the iteration time of image in painting.
机译:绘画中的图像是近年来流行的研究点,并且已经开发了许多策略。绘画方法中的偏微分方程(PDE)图像通常是该区域的基本构建块。但是,高计算量限制了基于PDE的图像在绘画中的应用,尤其是在移动终端中。本文首先提出了一种改进的曲率驱动扩散模型(ECDD),以提高修复性能。然后基于ECDD和总变化量(TV)执行快速的局部非纹理绘画方案,以使绘画中基于PDE的图像的计算效率更高。实验结果表明,所提出的策略不仅可以更准确地修复长时间断开的物体,而且可以大大缩短绘画中图像的迭代时间。

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