基于自适应修正决策的中值滤波器的图像去噪算法

IF 1.1 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS EAI Endorsed Transactions on Scalable Information Systems Pub Date : 2022-01-27 DOI:10.4108/eai.27-1-2022.173163
Faiz Ullah, K. Kumar, M. Khuhro, A. Laghari, A. Wagan, Umair Saeed
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引用次数: 0

摘要

在图像处理中,噪声去除是一个研究热点。人们进行了大量的研究,并设计了许多算法和滤波器来改善图像信息。有各种噪声去除程序来识别和去除损坏的像素。但一些图像去噪算法将滤波器应用于整个图像以过滤未损坏的像素。为了克服这些缺点,我们提出了一种有效的自适应中值滤波器(AMF)与改进的基于决策的中值滤波器(MDBMF)级联去噪算法。目的:将AMF和MDBMF方法相结合,获得一种有效的脉冲降噪算法,对各种类型的图像进行降噪。保留边缘,防止信号恶化,并确保未损坏的图像像素保持完整,无论图像中有不同程度的噪声。为了避免噪声像素被其他噪声像素所取代的情况,以保持图像的质量,而不是在传输、采集、存储等过程中经常发生的噪声退化版本,如模糊。方法、结果与结论:采用9幅标准灰度图像对所提出的高效去噪算法进行了性能验证。在本研究中,所有标准图像的大小都保持在256x256像素。本文提出的图像去噪系统对盐胡椒噪声密度为10% ~ 90%的图像进行了去噪实验。此外,将现有最先进的去噪技术(如AMF、MF、WMF、UMF和DBMF)的性能与提出的混合方法进行了对比。结果表明,混合方法在10% ~ 90%密度水平下得到的去噪图像质量明显优于WMF、UTMF、AMF和DBMF方法得到的去噪图像。该算法能有效地去除图像噪声密度较低或较高的椒盐噪声
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An Efficient Algorithm for Image De-noising by using Adaptive Modified Decision Based Median Filters
INTRODUCTION: In image processing noise removal is a hot research field. Lots of studies have been carried out and many algorithms and filters have been planned to improve the image information. There are various noise removal procedures to identify and remove the corrupted pixels. But several image de-noising algorithms apply the filter to the overall image to filter non-corrupted pixels also. To overcome these weaknesses, we proposed an efficient denoising algorithm by cascading Adaptive Median Filter (AMF) with Modified Decision Based Median Filter (MDBMF). OBJECTIVES: To acquire an efficient denoising algorithm for impulse noise reduction by combining AMF and MDBMF methods which are effective, efficient for denoising various kinds of images. To retain the edges, prevent signal deterioration, and ensure non-corrupted image pixels are remaining intact, regardless of various degrees of noise in the image. To avoid the condition where noisy pixels are replaced by other noisy pixels to maintain the quality of images from its degraded noise version such as blur which often takes place during transmission, acquisition, storage, etc. METHODS, RESULTS AND CONCLUSION: The performance corroboration of the proposed efficient denoising algorithmis accomplished employing nine standard grayscale images. The size of all standard images kept 256x256 pixels in this research. The proposed image denoising system has experimented on those images affected with 10% to 90% salt & pepper noise density. Additionally, the performance of the existing state-of-art denoising techniques like AMF, MF, WMF, UMF, and DBMF are contrasted with the proposed hybrid approach. The results showed that de-noised images obtained for 10% to 90% densities levels by proposed hybrid approach are quite better than the quality of denoised images achieved from WMF, UTMF, AMF, and DBMF methods. The proposed algorithm effectively eradicates salt and pepper noise for lower to higher image noise densities
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来源期刊
EAI Endorsed Transactions on Scalable Information Systems
EAI Endorsed Transactions on Scalable Information Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
2.80
自引率
15.40%
发文量
49
审稿时长
10 weeks
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