Improved adaptive median filters using nearest 4-neighbors for restoration of images corrupted with fixed-valued impulse noise

S. Beagum, N. Hundewale, M. Sathik
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引用次数: 8

Abstract

Recently we introduced an improved nearest neighborhood-based restoration (NNR) technique which when integrated in the second stage of the Adaptive Median Filter improved its performance in removing fixed valued impulse noise by giving an average increase of 7% in Peak Signal to Noise Ratio (PSNR) and 21% decrease in Mean Absolute Error (MAE). In our successive paper, we proposed a new adaptive center weighted median filter (NN-ACWM) that combined the adaptive median filtering technique with center weighted median for impulse detection and used the improved NNR technique for restoration. In this paper, we have integrated our improved nearest neighborhood-based restoration technique in the second stage of the Adaptive Center Weighted Median Filter (CW-ACWM) and have shown that this integration improves its performance in noise suppression by giving an average increase of 3% in PSNR and 13% decrease in MAE. We have also analyzed and compared the performance of the improved adaptive median filter (NN-AMF), NN-ACWM and the improved adaptive center weighted median filter (NN-CW-ACWM) in terms of PSNR, MAE and Mean Structural Similarity (MSSIM) index measures. The PSNR and MAE measures show that NN-ACWM performs better than NN-AMF and NN-CW-ACWM for noise densities <; 50 whereas NN-AMF performs better for noise densities > 50. The PSNR measures also show that NN-ACWM and NN-AMF outperforms several existing high density impulse noise removal algorithms including the Progressive Switching Median Filter, Decision Based Algorithm and Modified Decision Based Unsymmetric Trimmed Median Filter in removing fixed-valued impulse noise.
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改进自适应中值滤波器使用最近邻4恢复图像损坏固定值脉冲噪声
最近,我们引入了一种改进的基于最近邻的恢复(NNR)技术,该技术在自适应中值滤波器的第二阶段集成时,通过使峰值信噪比(PSNR)平均提高7%,平均绝对误差(MAE)平均降低21%,提高了去除固定值脉冲噪声的性能。在我们的后续文章中,我们提出了一种新的自适应中心加权中值滤波器(NN-ACWM),将自适应中值滤波技术与中心加权中值相结合用于脉冲检测,并使用改进的NNR技术进行恢复。在本文中,我们将改进的基于最近邻的恢复技术集成到自适应中心加权中值滤波器(CW-ACWM)的第二阶段,并表明这种集成通过平均提高3%的PSNR和降低13%的MAE来提高其噪声抑制性能。我们还分析和比较了改进的自适应中值滤波器(NN-AMF)、NN-ACWM和改进的自适应中心加权中值滤波器(NN-CW-ACWM)在PSNR、MAE和平均结构相似度(MSSIM)指标度量方面的性能。PSNR和MAE测量结果表明,在噪声密度为50的情况下,NN-ACWM的性能优于NN-AMF和NN-CW-ACWM。PSNR测量还表明,NN-ACWM和NN-AMF在去除固定值脉冲噪声方面优于现有的几种高密度脉冲噪声去除算法,包括渐进式切换中值滤波器、基于决策的算法和基于改进决策的非对称修剪中值滤波器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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