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Fast Exact Nearest Patch Matching for Patch-Based Image Editing and Processing

机译:快速精确的最近补丁匹配,用于基于补丁的图像编辑和处理

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摘要

This paper presents an efficient exact nearest patch matching algorithm which can accurately find the most similar patch-pairs between source and target image. Traditional match matching algorithms treat each pixel/patch as an independent sample and build a hierarchical data structure, such as kd-tree, to accelerate nearest patch finding. However, most of these approaches can only find approximate nearest patch and do not explore the sequential overlap between patches. Hence, they are neither accurate in quality nor optimal in speed. By eliminating redundant similarity computation of sequential overlap between patches, our method finds the exact nearest patch in brute-force style but reduces its running time complexity to be linear on the patch size. Furthermore, relying on recent multicore graphics hardware, our method can be further accelerated by at least an order of magnitude ({ge} 10{times}). This greatly improves performance and ensures that our method can be efficiently applied in an interactive editing framework for moderate-sized image even video. To our knowledge, this approach is the fastest exact nearest patch matching method for high-dimensional patch and also its extra memory requirement is minimal. Comparisons with the popular nearest patch matching methods in the experimental results demonstrate the merits of our algorithm.
机译:本文提出了一种有效的精确最近的补丁匹配算法,该算法可以准确地找到源图像和目标图像之间最相似的补丁对。传统的匹配算法将每个像素/补丁视为独立样本,并构建分层数据结构(例如kd-tree)以加快最近的补丁查找速度。但是,大多数这些方法只能找到近似的最近补丁,而不能探索补丁之间的顺序重叠。因此,它们在质量上既不精确也不在速度上最优。通过消除补丁之间顺序重叠的冗余相似性计算,我们的方法以蛮力风格找到了最接近的补丁,但将其运行时间复杂度降低为补丁大小线性。此外,依靠最新的多核图形硬件,我们的方法可以进一步加速至少一个数量级({ge} 10 {times})。这大大提高了性能,并确保我们的方法可以有效地应用于交互式编辑框架中,以处理中等大小的图像甚至视频。据我们所知,这种方法是针对高维补丁的最快,最精确的补丁匹配方法,并且其额外的内存需求也很小。与流行的最近的补丁匹配方法在实验结果中的比较证明了我们算法的优点。

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