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Root Mean Square filter for noisy images based on hyper graph model

机译:基于超图模型的噪声图像均方根滤波

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摘要

In this paper, we propose a noise removal algorithm for digital images. This algorithm is based on hyper-graph model of image, which enables us to distinguish noisy pixels in the image from the noise-free ones. Hence, our algorithm obviates the need for denoising all the pixels, thereby preserving as much image details as possible. The identified noisy pixels are denoised through Root Mean Square (RMS) approximation. The performance of our algorithm, based on peak-signal-to-noise-ratio (PSNR) and mean-absolute-error (MAE), was studied on various benchmark images, and found to be superior to that of other traditional filters and other hypergraph based denoising algorithms.
机译:在本文中,我们提出了一种用于数字图像的噪声消除算法。该算法基于图像的超图模型,这使我们能够将图像中的噪点像素与无噪声的像素区分开。因此,我们的算法消除了对所有像素进行去噪的需求,从而保留了尽可能多的图像细节。通过均方根(RMS)逼近对识别出的噪声像素进行消噪。我们在各种基准图像上研究了基于峰值信噪比(PSNR)和平均绝对误差(MAE)的算法的性能,发现该算法的性能优于其他传统滤波器和其他基于超图的去噪算法。

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