一种新的改进中值滤波器,用于从高度损坏的图像中去除椒盐噪声

Changhong Wang, Taoyi Chen, Zhenshen Qu
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引用次数: 53

摘要

针对椒盐噪声严重破坏的图像,提出了一种改进的中值滤波算法。首先,利用Max-Min噪声检测器将图像像素分为信号像素和噪声像素;然后根据局部统计信息将噪声像素分为低密度、中密度和高密度噪声三类。最后分别采用加权8邻域相似函数滤波器、5×5中值滤波器和4邻域均值滤波器对低、中、高电平情况进行去噪。在实验中,将该算法分别与标准中值滤波、极值中值滤波和自适应中值滤波三种典型方法进行了比较。验证结果表明,该算法具有较好的去噪能力、自适应能力和细节保持能力,尤其对图像严重损坏的情况有效。
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A novel improved median filter for salt-and-pepper noise from highly corrupted images
This paper proposes a novel improved median filter algorithm for the images highly corrupted with salt-and-pepper noise. Firstly all the pixels are classified into signal pixels and noisy pixels by using the Max-Min noise detector. The noisy pixels are then separated into three classes, which are low-density, moderate-density, and high-density noises, based on the local statistic information. Finally the weighted 8-neighborhood similarity function filter, the 5×5 median filter and the 4-neighborhood mean filter are adopted to remove the noises for the low, moderate and high level cases, respectively. In experiment, the proposed algorithm is compared with three typical methods, named Standard Median filter, Extremum Median filter and Adaptive Median filter, respectively. The validation results show that the proposed algorithm has better performance for capabilities of noise removal, adaptivity, and detail preservation, especially effective for the cases when the images are extremely highly corrupted.
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