首页> 外文会议>IAPR-TC-15 International Workshop on Graph-Based Representations in Pattern Recognition(GbRPR 2007); 20070611-13; Alicante(ES) >Deducing Local Influence Neighbourhoods with Application to Edge-Preserving Image Denoising
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Deducing Local Influence Neighbourhoods with Application to Edge-Preserving Image Denoising

机译:推导局部影响邻域及其在边缘保留图像去噪中的应用

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摘要

Traditional image models enforce global smoothness, and more recently Markovian Field priors. Unfortunately global models are inadequate to represent the spatially varying nature of most images, which are much better modeled as piecewise smooth. This paper advocates the concept of local influence neighbourhoods (LINs). The influence neighbourhood of a pixel is defined as the set of neighbouring pixels which have a causal influence on it. LINs can therefore be used as a part of the prior model for Bayesian denoising, deblurring and restoration. Using LINs in prior models can be superior to pixel-based statistical models since they provide higher order information about the local image statistics. LINs are also useful as a tool for higher level tasks like image segmentation. We propose a fast graph cut based algorithm for obtaining optimal influence neighbourhoods, and show how to use them for local filtering operations. Then we present a new expectation-maximization algorithm to perform locally optimal Bayesian denoising. Our results compare favourably with existing denoising methods.
机译:传统的图像模型会强制执行全局平滑度,而最近使用的是Markovian Field先验算法。不幸的是,全局模型不足以表示大多数图像的空间变化特性,而更好地建模为分段平滑。本文提倡局部影响社区(LINs)的概念。像素的影响邻域定义为对其具有因果影响的一组相邻像素。因此,LIN可以用作贝叶斯去噪,去模糊和恢复的现有模型的一部分。在现有模型中使用LIN优于基于像素的统计模型,因为它们提供有关本地图像统计信息的高阶信息。 LIN还可用作诸如图像分割之类的高级任务的工具。我们提出了一种基于图割的快速算法来获得最佳影响邻域,并展示了如何将其用于局部过滤操作。然后,我们提出了一种新的期望最大化算法来执行局部最优贝叶斯去噪。我们的结果与现有的去噪方法相比具有优势。

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