Transformed Low-Rank Model for Line Pattern Noise Removal

Yi Chang, Luxin Yan, Sheng Zhong
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引用次数: 125

Abstract

This paper addresses the problem of line pattern noise removal from a single image, such as rain streak, hyperspectral stripe and so on. Most of the previous methods model the line pattern noise in original image domain, which fail to explicitly exploit the directional characteristic, thus resulting in a redundant subspace with poor representation ability for those line pattern noise. To achieve a compact subspace for the line pattern structure, in this work, we incorporate a transformation into the image decomposition model so that maps the input image to a domain where the line pattern appearance has an extremely distinct low-rank structure, which naturally allows us to enforce a low-rank prior to extract the line pattern streak/stripe from the noisy image. Moreover, the random noise is usually mixed up with the line pattern noise, which makes the challenging problem much more difficult. While previous methods resort to the spectral or temporal correlation of the multi-images, we give a detailed analysis between the noisy and clean image in both local gradient and nonlocal domain, and propose a compositional directional total variational and low-rank prior for the image layer, thus to simultaneously accommodate both types of noise. The proposed method has been evaluated on two different tasks, including remote sensing image mixed random-stripe noise removal and rain streak removal, all of which obtain very impressive performances.
变换的低秩线性模式去噪
本文研究了单幅图像的线纹噪声去除问题,如雨条纹、高光谱条纹等。以往的方法大多是在原始图像域对线纹噪声进行建模,但没有明确地利用方向特征,导致多余的子空间对线纹噪声的表示能力较差。为了实现线条图案结构的紧凑子空间,在这项工作中,我们将一个转换合并到图像分解模型中,以便将输入图像映射到线条图案外观具有非常明显的低秩结构的域,这自然允许我们在从噪声图像中提取线条图案条纹/条纹之前强制执行低秩。此外,随机噪声通常与线形噪声混合在一起,这使得具有挑战性的问题变得更加困难。与以往的方法依赖于多幅图像的光谱或时间相关性不同,本文在局部梯度域和非局部梯度域对噪声图像和干净图像进行了详细的分析,并提出了图像层的合成方向全变分和低秩先验,从而同时适应两种类型的噪声。本文提出的方法在遥感图像混合随机条纹噪声去除和雨纹去除两个不同的任务上进行了测试,均获得了令人印象深刻的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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