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A structural refinement method based on image gradient for improving performance of noise-restoration stage in decision based filters

机译:一种基于图像梯度的结构改进方法,用于提高基于判定滤波器噪声恢复阶段的性能

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In recent years, decision based filters (DBFs) are the most popular technique for impulse-noise restoration. The DBFs consist of two stages: noise-detection and noise-restoration. The performance of noise-restoration stage affects the quality of DBFs significantly. In this paper, we presented an effective structural based refinement method which could be adopted as a complementary stage after DBF5 to improve the quality of the final restored image. Here, we assume that the preliminary DBF has detected the noisy-pixels and has restored the intensities of the noisy-pixels. In our proposed refinement method for each detected noisy-pixel, based on local structural information of the image, the previously restored intensity of noisy-pixel is modified more accurately. This is performed by analyzing the gradient of output restored image of preliminary DBF and calculating direction of contour which are passed through the noisy-pixels. Then based on the angular difference of contour-direction with 4 main lines, which are passing through the noisy-pixel, the previously restored intensity of noisy-pixel is replaced with weighted means of surrounding pixels' intensities. Since the structures in images are more recognizable for low-density impulse-noise, our method is more effective in this case, however a small improvement is obtained for high-density impulse-noise. (C) 2018 Elsevier Inc. All rights reserved.
机译:近年来,基于决策的过滤器(DBFS)是脉冲噪声恢复最流行的技术。 DBFS由两个阶段组成:噪声检测和噪声恢复。噪声恢复阶段的性能显着影响DBFS的质量。在本文中,我们介绍了一种有效的基于结构的细化方法,可以在DBF5之后作为补充阶段采用,以提高最终恢复的图像的质量。在这里,我们假设初步DBF检测到嘈杂像素,并恢复了嘈杂像素的强度。在我们所提出的每个检测到的噪声 - 像素的细化方法中,基于图像的局部结构信息,更准确地修改先前恢复的噪声噪声强度。这是通过分析初步DBF的输出恢复图像的梯度和通过嘈杂像素传递的轮廓的梯度来执行。然后基于轮廓方向的角度差与4个主线通过嘈杂的像素,用围绕像素强度的加权装置代替先前恢复的噪声强度。由于图像中的结构更识别用于低密度脉冲噪声,因此我们的方法在这种情况下更有效,但是获得了高密度脉冲噪声的小改进。 (c)2018年Elsevier Inc.保留所有权利。

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