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首页> 外文期刊>Digital Signal Processing >An impulsive noise color image filter using learning-based color morphological operations
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An impulsive noise color image filter using learning-based color morphological operations

机译:使用基于学习的颜色形态学运算的脉冲噪声彩色图像滤波器

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摘要

Morphological filter is a kind of morphological operation-based nonlinear filter. It is effective in impulsive noise filtering and has been extensively studied in the past two decades. In the presented study, a new multichannel filtering approach established on learning-based color morphological operations for impulsive noise removal in color image is presented. By using the color pixel ordering scheme learned from the pre-estimation of impulsive noise, contaminated pixels are ordered as maximum ones in erosion operation or minimum ones in dilation operation, respectively. This characteristic ensures that only uncontaminated color pixels are distributed in morphological operations, hence noisy pixels are suppressed. Reconstruction is followed to alleviate the blurring and bias effects of morphological operations and to preserve image features. The presented filtering approach greatly enhances the performance of morphological operation-based filters, especially in the color image highly corrupted by impulsive noise. Experiments and comparisons with classical filters, such as basic vector median filter (VMF), basic vector directional filter (BVDF), NOPNCP filter, etc., as well as some newly developed filters, are performed to demonstrate the effectiveness of the proposed color image filtering algorithm. (c) 2007 Elsevier Inc. All rights reserved.
机译:形态滤波器是一种基于形态运算的非线性滤波器。它在脉冲噪声滤波方面很有效,并且在过去的二十年中已经进行了广泛的研究。在提出的研究中,提出了一种新的多通道滤波方法,该方法建立在基于学习的颜色形态学运算基础上,用于去除彩色图像中的脉冲噪声。通过使用从脉冲噪声的估计中学习到的彩色像素排序方案,受污染的像素在腐蚀操作中分别被排列为最大像素,在膨胀操作中被排列为最小像素。该特性确保在形态学操作中仅分配未受污染的彩色像素,因此抑制了噪声像素。随后进行重构以减轻形态学操作的模糊和偏差影响并保留图像特征。所提出的滤波方法极大地增强了基于形态学运算的滤波器的性能,尤其是在脉冲噪声严重破坏的彩色图像中。通过对经典滤波器(例如基本矢量中值滤波器(VMF),基本矢量方向滤波器(BVDF),NOPNCP滤波器等)以及一些新开发的滤波器进行实验和比较,以证明所提出的彩色图像的有效性过滤算法。 (c)2007 Elsevier Inc.保留所有权利。

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