An improved non-local means algorithm based on difference hash algorithm

Xintong Zou, Chunjian Hua, Jinke Ma
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引用次数: 1

Abstract

Aiming at the inaccuracy of Non-Local Means (NLM) algorithm for measuring the similarity of neighborhood blocks, an improved Non-Local Means denoising algorithm based on Difference Hash (dHash) algorithm and Hamming distance is proposed. The traditional algorithm measures the similarity between neighborhood blocks by Euclidean distance, so the ability to preserve edges and details is weak, which leads to the blurred and distorted images after filtering. To this end, the Difference Hash algorithm containing the gradient information is introduced, the difference hash images are generated from neighborhood blocks, and the Hamming distance of the difference hash images is calculated to measure the similarity of the neighborhood blocks. Finally, the Euclidean distance is improved. Experiment results show that the proposed method can preserve edges and details while denoising the low-noise images. Compared with other improved algorithms, the running speed of the proposed algorithm is also greatly improved, which has a certain application value.
基于差分哈希算法的改进非局部均值算法
针对非局部均值(NLM)算法测量邻域块相似度的不准确性,提出了一种基于差分哈希(dHash)算法和汉明距离的改进非局部均值去噪算法。传统算法通过欧几里得距离度量相邻块之间的相似度,因此对边缘和细节的保留能力较弱,导致滤波后的图像模糊和失真。为此,引入包含梯度信息的差分哈希算法,从邻域块生成差分哈希图像,并计算差分哈希图像的Hamming距离来度量邻域块的相似性。最后,改进了欧几里得距离。实验结果表明,该方法在对低噪声图像去噪的同时,能够保持图像的边缘和细节。与其他改进算法相比,本文算法的运行速度也有较大提高,具有一定的应用价值。
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