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A Novel Adaptive Gaussian-Weighted Mean Filter for Removal of High-Density Salt-and-Pepper Noise from Images

机译:去除高密度椒盐噪声的新型自适应高斯加权均值滤波器

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Salt-and-pepper (SAP) noise is one of the common impulse noises. It is generated mostly during the process of image capture and storage, due to false locations in memory and damaged image sensors. SAP noise seriously degrades the quality of images and affects the performance of subsequent image processing, such as edge detection, image segmentation and object recognition. Thus, it is quite necessary to remove SAP noise from corrupted images efficiently. In this paper, we propose a fast-adaptive Gaussian-weighted mean filter (FAGWMF) for removing salt-and-pepper noises. Our denoising filter consists of four stages. At the first stage, we preprocess the image by enlarging and flipping the image. Then, we detect noisy pixels by comparing the pixel value with the maximum (255) and minimum (0) value. One pixel is regarded as noise if its value is equal to the maximum or minimum value. Otherwise, it is regarded as noise-free pixel. At the third stage, we determine the working window size by enlarging the filter window continuously until the quantity of noise-free pixels it includes reaches to the predetermined threshold or the window radius reaches to the predetermined maximum value. At the last stage, we replace each noise candidate by its Gaussian-weighted mean value of the noise-free pixels in window. Using Gaussian-weighted template, the central candidates will get larger weights than those on edges, which helps to preserve the edge information efficiently. Simulation results show that compared to some state-of-the-art algorithms, our proposed filter has faster execution speed and better restoration quality.
机译:椒盐(SAP)噪声是常见的脉冲噪声之一。由于内存中的错误位置和损坏的图像传感器,它主要是在图像捕获和存储过程中生成的。 SAP噪声严重降低了图像质量,并影响了后续图像处理的性能,例如边缘检测,图像分割和对象识别。因此,非常有必要有效地从损坏的图像中消除SAP噪声。在本文中,我们提出了一种快速自适应的高斯加权均值滤波器(FAGWMF)来消除椒盐噪声。我们的降噪滤波器包括四个阶段。在第一阶段,我们通过放大和翻转图像来预处理图像。然后,我们通过比较像素值与最大值(255)和最小值(0)来检测噪声像素。如果一个像素的值等于最大值或最小值,则将其视为噪声。否则,它被视为无噪声像素。在第三阶段,我们通过连续放大滤镜窗口直到其包含的无噪声像素数量达到预定阈值或窗口半径达到预定最大值来确定工作窗口大小。在最后阶段,我们将每个噪声候选者替换为其窗口中无噪声像素的高斯加权平均值。使用高斯加权模板,中心候选将比边缘获得更大的权重,这有助于有效地保留边缘信息。仿真结果表明,与某些最新算法相比,我们提出的滤波器具有更快的执行速度和更好的恢复质量。

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