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Adaptive rank-conditioned median filter for edge-preserving image smoothing

机译:自适应秩条件中值滤波器,用于边缘保持图像平滑

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Abstract: Median filter (MF) is a powerful tool for impulsive noise removal in digital signals and images: noisy samples do not affect its output, but are discarded as outliers. The basic scheme of median filter has been specialized to remove noisy spikes with little distortion, that is without modifying noise-free pixels, like the rank-conditioned median (RCM) filter, recently introduced by the authors. In this work a spatially adaptive RCM scheme (ARCM) is proposed with the aim at extending its filtering capability also to additive and multiplicative noise models. Accordingly, only pixels having boundary ranks are adaptively replaced with the sample median, while the others are left unaltered: pixel replacements are conditioned to their ranks, i.e., positions of their values after sorting in ascending order, based on an estimate of local SNR and on the response of a simple detector of structured edges. An adaptivity function is empirically designed, and a unified framework is developed to deal with both additive and multiplicative noise models. Results are presented on images corrupted with several noise models, as well as on true synthetic aperture radar (SAR) images affected by speckle noise. !16
机译:摘要:中值过滤器(MF)是一种强大的工具,用于数字信号和图像中的脉冲噪声删除:嘈杂的样本不会影响其输出,但被丢弃为异常值。中值过滤器的基本方案专门用于消除具有很小失真的嘈杂尖峰,即不修改无噪声像素,如作者最近引入的等级调节中值(RCM)过滤器。在这作用中,提出了一种空间自适应RCM方案(ARCM),其目的在于将其滤波能力扩展到附加和乘法噪声模型。因此,只有具有边界等级的像素被自适应地替换为样本中值,而其他像素留下未置换:基于本地SNR的估计,将像素替换被调节到它们的等级,即,按升序排序后的值。关于结构边缘简单检测器的响应。经验设计了适应性功能,开发了一个统一的框架来处理附加和乘法噪声模型。结果显示在具有多种噪声模型的图像损坏,以及受散斑噪声影响的真正的合成孔径雷达(SAR)图像。 !16

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