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Moran's / for impulse noise detection and removal in color images

机译:莫兰/用于彩色图像中的脉冲噪声检测和去除

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An approach for impulse noise detection and removal in color images based on Moran's I (MI) statistic is proposed. The proposed method consists of detection and removal components and is called Moran's I vector median filter (MIVMF). The detection module is able to determine if a pixel is noise or noise-free. If it is a noise pixel, the vector median filter (VMF) will be used to remove the noise. This detection capability meets the so-called "switching" mechanism, which only selects noisy pixels for denoising. Hence, this proposed filter will expedite the processing time with the reduced number of vector calculations in the VMF due to this detection function. This type of detection is achieved with MI index and the indication of one-dimensional Laplacian kernels. We compare the proposed MIVMF with other well-developed vector-type median filters in the literature. Our experimental results show that the proposed filter is not only faster in the filtering process but also efficient in removing random impulse noise with different noise levels in color images. The MIVMF demonstrates a promising denoising result based on the criteria of peak signal-to-noise ratio and structural similarity index metric. With the visualization of processed images, the MIVMF can avoid image blurring, preserve the edge details, and achieve superior noise reduction. (C) The Authors. Published by SPIE under a Creative Commons Attribution 3.0 Unported License.
机译:提出了一种基于Moran I(MI)统计量的彩色图像脉冲噪声检测与去除方法。所提出的方法由检测和去除组件组成,被称为Moran I向量中值滤波器(MIVMF)。检测模块能够确定像素是噪声还是无噪声。如果是噪声像素,则将使用矢量中值滤波器(VMF)去除噪声。这种检测能力符合所谓的“切换”机制,该机制仅选择噪声像素进行降噪。因此,由于该检测功能,该提出的滤波器将通过减少VMF中的向量计算数量来加快处理时间。通过MI索引和一维Laplacian内核的指示可以实现这种类型的检测。我们将提出的MIVMF与文献中其他发达的矢量型中值滤波器进行比较。我们的实验结果表明,所提出的滤波器不仅在滤波过程中速度更快,而且在去除彩色图像中具有不同噪声水平的随机脉冲噪声方面也很有效。基于峰值信噪比和结构相似性指标度量标准,MIVMF展示了有希望的去噪结果。通过处理图像的可视化,MIVMF可以避免图像模糊,保留边缘细节并实现出色的降噪效果。 (C)作者。由SPIE根据Creative Commons Attribution 3.0 Unported License发布。

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