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A study on regression spline based local minima approach for gaussian noise reduction in images

机译:基于回归样条的局部极小值图像高斯降噪研究

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The study proposes a novel image denoising algorithm based on the regression splines (RS) for the restoration of images corrupted with the Gaussian noise. In the proposed algorithm, overlapping window of dimension 5×5 have been considered to replace the central pixel value with the local minimum of both diagonal pixels and central row and column pixels of the processing window. Selection of minimum of approximate pixel value helps in reducing the noise diffusion to the neighboring pixels. The proposed algorithm has been found to function efficiently for the Gaussian noise removal while preserving the fine image details.
机译:该研究提出了一种基于回归样条(RS)的新颖图像去噪算法,用于恢复受高斯噪声破坏的图像。在所提出的算法中,已经考虑了尺寸为5×5的重叠窗口,以用对角像素以及处理窗口的中心行和列像素的局部最小值代替中心像素值。选择近似像素值的最小值有助于减少噪声扩散到相邻像素。已经发现提出的算法对于高斯噪声去除有效,同时保留了精细的图像细节。

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