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Fast High-Dimensional Bilateral and Nonlocal Means Filtering

机译:快速的高维双边和非局部均值滤波

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摘要

Existing fast algorithms for bilateral and nonlocal means filtering mostly work with grayscale images. They cannot easily be extended to high-dimensional data such as color and hyperspectral images, patch-based data, and flow-fields. In this paper, we propose a fast algorithm for high-dimensional bilateral and nonlocal means filtering. Unlike existing approaches, where the focus is on approximating the data (using quantization) or the filter kernel (via analytic expansions), we locally approximate the kernel using weighted and shifted copies of a Gaussian, where the weights and shifts are inferred from the data. The algorithm emerging from the proposed approximation essentially involves clustering and fast convolutions, and is easy to implement. Moreover, a variant of our algorithm comes with a guarantee (bound) on the approximation error, which is not enjoyed by existing algorithms. We present some results for high-dimensional bilateral and nonlocal means filtering to demonstrate the speed and accuracy of our proposal. Moreover, we also show that our algorithm can outperform the state-of-the-art fast approximations in terms of accuracy and timing.
机译:现有的用于双边和非本地的快速算法意味着过滤主要用于灰度图像。它们不能轻易地扩展到高维数据,例如彩色和高光谱图像,基于色块的数据以及流场。在本文中,我们提出了一种用于高维双边和非局部均值滤波的快速算法。与现有方法不同,在现有方法中,重点是近似数据(使用量化)或过滤器内核(通过解析扩展),我们使用高斯加权和移位后的副本在本地对内核进行近似,其中从数据推断出权重和偏移。从提出的近似中出现的算法本质上涉及聚类和快速卷积,并且易于实现。此外,我们算法的一种变体带有逼近误差的保证(绑定),这是现有算法无法享受的。我们提出了一些针对高维双边和非局部均值滤波的结果,以证明我们的提议的速度和准确性。此外,我们还表明,在准确性和时序方面,我们的算法可以胜过最新的快速逼近。

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