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A new and efficient approach for the removal of high density impulse noise in mammogram

机译:一种新的有效的方法,用于去除乳房X线图中的高密度脉冲噪声

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This paper proposes a combined approach for removing impulse noise from digital mammograms which implement a detection followed by filtering mechanism, in which, detection is done using a robust local image statistical measure called modified robust outlyingness ratio (MROR) followed by a filtering framework based on extended nonlocal means (ENLM). All the pixels in the image are grouped into four different clusters based on the value of MROR. The detection system consists of two stages, coarse stage and fine stage. In each stage, different decision rules are adopted to detect the impulse noise in each cluster and to restore the image, the value of the noisy pixels is replaced with the modified median-based value of the corresponding window based on the cluster position. For filtering, the NL-means filter is extended by introducing a reference image. Simulations are carried out on the MIAS database and the performance of the proposed filter has been evaluated quantitatively and qualitatively through experimental analysis and the results are compared with several existing filters such as standard median filter (SMF), adaptive median filter (AMF), robust outlyingness ratio – non local means (ROR-NLM) and modified robust outlyingness ratio – non local means (MROR-NLM).
机译:本文提出了一种组合方法,用于从实现检测的数字乳房X线照片中去除脉冲噪声的组合方法,其次是过滤机制,其中,使用一种被称为修改的鲁棒偏心比(MR)的稳健的本地图像统计测量来完成检测,然后基于滤波框架进行过滤框架延长的非局部手段(ELEM)。图像中的所有像素都基于MRO的值分组为四个不同的群集。检测系统由两个阶段,粗阶段和细阶段组成。在每个阶段,采用不同的决策规则来检测每个集群中的脉冲噪声并恢复图像,基于簇位置替换噪声像素的值的基于对应窗口的修改中值的值。为了过滤,通过引入参考图像来扩展NL-均值滤波器。在MIAS数据库上进行仿真,通过实验分析定量和定性地评估所提出的过滤器的性能,并将结果与​​若干现有滤波器(如标准中值滤波器(SMF),自适应中值滤波器(AMF)进行比较,鲁棒远方比 - 非局部方法(ROR-NLM)和改进的鲁棒间面比 - 非本地方法(MROR-NLM)。

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