一种基于粗糙集的图像去噪算法

Rudrajit Choudhuri, Sayan Halder, A. Halder
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引用次数: 0

摘要

本文的主要重点是通过去除图像中的盐和胡椒噪声来增强图像。本文提出了一种基于粗糙集理论的统计方法,通过决策粗糙参数控制噪声像素的识别和去除。每个增强决策都直接由四个参数决定:像素是否有噪声,像素是否有足够兼容的无噪声邻居来取代它,相邻像素与中心像素值的偏差,以及阈值准则的匹配。四阶段决策算法获得高度准确的结果,并且通过连续的迭代和升级,该算法能够去除所有噪声像素,同时保持图像的精细细节,即使95%的损坏水平。
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A Novel Rough Set Based Image Denoising Algorithm
The primary focus of the paper is towards image enhancement via removal of salt and pepper noise from images. In this paper, a novel statistical approach based on the properties of rough set theory is proposed, where noisy pixel identification and removal are controlled by decision rough parameters. Each enhancement decision is directly governed by four parameters – the pixel is noisy or not, the pixel has any non-noisy neighbor compatible enough to replace it, the deviation of the neighboring pixel from the central pixel value, and matching of the threshold criterion. The four phase decision making algorithm fetches highly accurate results and with consecutive iterations and upgradation, the algorithm is able to remove all noisy pixels while maintaining fine details of the image for even 95% corruption levels.
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