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A new efficient approach for the removal of impulse noise from highly corrupted images

机译:一种新的有效方法,可从高度损坏的图像中消除脉冲噪声

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摘要

A new framework for removing impulse noise from images is presented in which the nature of the filtering operation is conditioned on a state variable defined as the output of a classifier that operates on the differences between the input pixel and the remaining rank-ordered pixels in a sliding window. As part of this framework, several algorithms are examined, each of which is applicable to fixed and random-valued impulse noise models. First, a simple two-state approach is described in which the algorithm switches between the output of an identity filter and a rank-ordered mean (ROM) filter. The technique achieves an excellent tradeoff between noise suppression and detail preservation with little increase in computational complexity over the simple median filter. For a small additional cost in memory, this simple strategy is easily generalized into a multistate approach using weighted combinations of the identity and ROM filter in which the weighting coefficients can be optimized using image training data. Extensive simulations indicate that these methods perform significantly better in terms of noise suppression and detail preservation than a number of existing nonlinear techniques with as much as 40% impulse noise corruption. Moreover, the method can effectively restore images corrupted with Gaussian noise and mixed Gaussian and impulse noise. Finally, the method is shown to be extremely robust with respect to the training data and the percentage of impulse noise.
机译:提出了一种从图像中去除脉冲噪声的新框架,其中,滤波操作的性质以状态变量为条件,状态变量定义为分类器的输出,该分类器根据输入像素与像素中其余按顺序排列的像素之间的差异进行运算滑动窗口。作为该框架的一部分,研究了几种算法,每种算法都适用于固定和随机值的脉冲噪声模型。首先,描述了一种简单的两态方法,其中该算法在身份过滤器的输出和秩均值(ROM)过滤器之间切换。与简单的中值滤波器相比,该技术在噪声抑制和细节保留之间实现了极佳的折衷,并且计算复杂性几乎没有增加。对于存储器中的少量附加成本,可以使用标识和ROM滤波器的加权组合轻松地将此简单策略推广为多状态方法,其中可以使用图像训练数据来优化加权系数。大量的模拟表明,这些方法在噪声抑制和细节保留方面的性能要比许多现有的非线性技术(脉冲噪声损坏高达40%)要好得多。此外,该方法可以有效地恢复被高斯噪声以及混合的高斯和脉冲噪声破坏的图像。最后,相对于训练数据和脉冲噪声的百分比,该方法显示出极强的鲁棒性。

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