非局部是指基于SVD基图像去噪

Marzieh Seyedebrahim, Azadeh Mansouri
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引用次数: 0

摘要

假设自然图像含有大量的自相似性,非局部均值图像去噪利用斑块相似性来过滤有噪图像。虽然非局部均值算法的输出在去除低电平噪声方面是非常理想的,但当噪声增大时,性能会下降。这是因为不能通过有噪声的斑块来完美地评估相似性。为了解决这一问题,在该方法中,基于结构信息对每个patch进行相似性评估。这是由于HVS(人类视觉系统)被高度采用来从观看场景中提取结构信息。本文引入了一种改进的非局部均值滤波器,以便在高噪声的情况下找到更好的相似块。实验结果表明,该算法在视觉上和定量上都具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-local means denoising based on SVD basis images
With the assumption that natural images contain considerable amount of self-similarity, non-local means image de-noising uses patches similarity in order to filter noisy images. Although the output of the Non local means algorithm is very desirable in removing the low level of noise, when the noise increases, the performance deteriorates. This is because the similarity cannot be evaluated perfectly through noisy patches. To solve this problem, in the proposed approach, the similarity evaluation for each patch is performed based on the structural information. This is due to the fact that the HVS (Human Visual System) is highly adopted to extract structural information from a viewing scene. In this paper, a modified non-local means filter is introduced in order to find better similar patches especially in the case of high level of noise. The experimental results show appropriate performance of the presented algorithm both visually and quantitatively.
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