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Noise detection and cleaning by hypergraph model

机译:通过超图模型进行噪声检测和清除

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摘要

This paper introduces a new algorithm for visual reconstruction of digital images which have been corrupted by mixed noise. From an image hypergraph model we introduce a combinatorial definition of noisy data. A detection procedure is used to classify the hyperedges either as noisy or clean data. Similar to other techniques, the proposed algorithm uses then an estimation procedure to remove the effects of the noise from image data. Numerical simulations demonstrate that this algorithm suppress the effect of the noise while preserving the edges with a high degree of accuracy at a relatively low computational cost.
机译:本文介绍了一种新算法,用于视觉重建数字图像,该图像已被混合噪声破坏。从图像超图模型中,我们引入了噪声数据的组合定义。使用检测程序将超边缘分类为嘈杂数据或干净数据。与其他技术类似,所提出的算法然后使用估计程序从图像数据中去除噪声的影响。数值模拟表明,该算法在以相对较低的计算成本以较高的精度保留边缘的同时,抑制了噪声的影响。

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